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Systematic ground motion observations in the Canterbury earthquakes and region-specific non-ergodic empirical ground motion modeling Brendon A. Bradleya) This paper presents an examination of ground motion observations from 20 near-source strong motion stations during the most significant 10 events in the 2010-2011 Canterbury earthquake to examine region-specific systematic effects based on relaxing the conventional ergodic assumption. On the basis of similar site-to-site residuals, surfical geology, and geographical proximity, 15 of the 20 stations are grouped into four sub-regions: the Central Business District; and Western, Eastern, and Northern suburbs. Mean site-to-site residuals for these subregions then allows for the possibility of non-ergodic ground motion prediction over these sub-regions of Canterbury, rather than only at strong motion station locations. The ratio of the total non-ergodic vs. ergodic standard deviation is found to be, on average, consistent with previous studies, however it is emphasized that on a site-by-site basis the non-ergodic standard deviation can easily vary by ±20%. INTRODUCTION The 2010-2011 Canterbury earthquake sequence includes the 4 September 2010 ππ€ 7.1 Darfield earthquake (e.g. Gledhill et al. 2011, NZSEE 2010) and three subsequent earthquakes of ππ€ β₯ 5.9, most notably the 22 February 2011 M w6.2 Christchurch earthquake that resulted in 185 fatalities (NZSEE 2011, Seismological Research Letters 2011). Ground shaking in the Darfield earthquake resulted in widespread liquefaction in eastern Christchurch and in isolated areas throughout the region (Cubrinovski et al. 2010), and substantial damage to unreinforced masonry structures (Dizhur et al. 2010). The ππ€ 6.2 Christchurch earthquake caused significant damage to commercial and residential buildings of various eras (Buchanan et al. 2011, Clifton et al. 2011, Kam et al. 2011). The severity and spatial extent of liquefaction observed in native soils was profound, and was the dominant cause of damage to residential houses, bridges and underground lifelines (Cubrinovski et al. a) University of Canterbury, Private Bag 4800, Ilam, Christchurch, New Zealand 2011). The 13 June 2011 ππ€ 6.0 earthquake caused further damage to previously damaged structures and severe liquefaction and rockfalls, and similarly for the ππ€ 5.8 and ππ€ 5.9 earthquakes on 23 December 2011. As a result of a high-density of strong motion instruments in the Canterbury region (Berrill et al. 2011) operated by GeoNet (www.geonet.org.nz) a significant number of high amplitude near-source ground motion have been recorded during this sequence (e.g. Bradley 2012c, Bradley and Cubrinovski 2011). Of particular note are the large number of strong motions which have been recorded at the same location over these multiple events. Such a relatively unique ground motion dataset allows for the opportunity to directly examine systematic and repeatable ground motion phenomena. Such systematic effects have been qualitatively noted in the Canterbury ground motions (Bradley 2012b), but significant additional insight can be gained by quantitative analysis. One approach to examine systematic ground motion phenomena is based on the use of empirical ground motion prediction equations (GMPEs) without the so-called ergodic assumption (Anderson and Brune 1999). Lin et al. (2011), Walling (2009), and RodriguezMarek et al. (2011), among others, represent examples where the non-ergodic ground motion prediction framework has been utilized to examine the reduction in the standard deviation of pseudo-acceleration response spectral ordinates due to relaxation of the ergodic assumption. In this paper, systematic effects in the Canterbury earthquakes are examined within the non-ergodic empirical ground motion prediction framework. The earthquake events and strong motion stations considered are first presented, with particular emphasis placed on the significant ground motion amplitudes considered. The theoretical details of the non-ergodic ground motion prediction methodology utilized are elaborated upon, and the observed results from applying this methodology to the near-source strong motions in the Canterbury earthquake sequence are presented, and compared with previous studies. Finally, the application of the developed non-ergodic modification factors are compared with ergodic predictions and observed ground motions. EARTHQUAKE EVENTS AND STRONG MOTION STATIONS CONSIDERED In selecting the events to consider in the Canterbury earthquake sequence, a trade-off naturally occurs between the number of events and the representative range of the ground motion amplitudes produced. Considering a larger number of events provides statistically more robust estimates (i.e. larger sample sizes). However, in order to consider more events the minimum ground motion intensity obviously has to be reduced. As a result, the overall dataset becomes increasingly dominated by smaller amplitude ground motions which are arguably not of primary concern when GMPEs are utilized in probabilistic seismic hazard analysis (PSHA) for developing design strong motions. Furthermore, there are an abundance of studies illustrating the lack of correlation between GMPE performance for small and large magnitude events. As a result of the above considerations, only events above magnitude ππ€ 4.5, which produced ground motions of engineering significance in the urban Christchurch area, were considered. This resulted in a set of 10 events, the basic details of which are given in Table 1. It is to be noted in Table 1 that a maximum source-to-site distance for recorded ground motions was also utilized to remove those ground motions which are of low amplitude (approximately PGA>0.01g) as discussed previously. Table 1: Earthquake events considered ID 1 2 3 4 5 6 7 8 9 10 Event date Magnitude, ππ€ 1 Maximum source-to-site πππ₯ distance, π ππ’π (km) 100 30 30 50 30 50 50 30 50 50 4 September 2010 7.1 19 October 2010 4.8 26 December 2010 4.7 22 February 2011 6.2 16 April 2011 5.0 13 June 2011 (1:01pm) 5.3 13 June 2011 (2:20pm) 6.0 21 June 2011 5.2 23 December 2011 (12:58pm) 5.8 23 December 2011 (2:18pm) 5.9 1 Moment magnitudes obtained from GeoNet (www.geonet.org.nz) regional Centroid Moment Tensor (CMT) solutions (Ristau 2008). For the 4 September 2010, 22 February 2011, 13 June 2011, and 23 December 2011 (i.e. the four largest events) the finite fault inversion studies by Beavan et al. (2011, 2012) were adopted for defining fault source geometry while moment magnitude, ππ€ , was obtained from regional centroid moment tensor solutions (www.geonet.org.nz; last accessed June 2012), based on Ristau (2008). For the remaining six smaller events, regional centroid moment tensor solutions were used to provide the event ππ€ , and a finite fault model was developed assuming the centroid location to be at the center of the finite fault plane along-strike and down-dip, and using the appropriate magnitude scaling relationship for New Zealand (NZ) (Stirling et al. 2012) for defining along-strike length and down-dip width. Figure 1 illustrates the study region and the location of the finite fault models of the 10 different earthquake events considered. A total of 20 strong motion stations were considered in the Christchurch region for the purposes of examining systematic site effects. Ground motion processing was as discussed in Bradley (2012c) producing useable spectral ordinates from T=0.01-10s. Figure 1 illustrates the locations of the 20 stations relative to the seismic sources considered, while Table 2 provides a list of the stations and the values of geometric mean PGA which were recorded for each of the 10 events. Figure 2 provides a histogram of the geometric mean PGA values in Table 2. It can be clearly seen that the dataset is comprised of a significant number of high intensity ground motions with values in the range of 0.01-1.41g, and a mean value of 0.183g. For each strong motion record, PGA and elastic pseudo-acceleration response spectral ordinates (SA) for vibration periods from 0.01-10s are computed and considered in the analyses to follow. Figure 1: Location of the finite fault planes of the 10 considered earthquake events, and the location of the 20 strong motions at which systematic site effects are examined. Color coding of the finite fault models is for clarity only. Table 2: Strong motion stations for which systematic site effects are considered and the observed geometric mean PGA values in the 10 considered events Num events, Observed geometric mean peak ground acceleration in each event, ππΊπ΄ (g) ππΈπ Station 1 2 3 4 5 6 7 8 9 10 CACS D 10 0.197 0.027 0.020 0.21 0.034 0.081 0.136 0.104 0.073 0.083 CBGS D 10 0.158 0.069 0.270 0.50 0.070 0.183 0.163 0.077 0.157 0.210 CCCC D 6 0.224 0.119 0.227 0.43 0.134 0.179 CHHC D 10 0.173 0.089 0.162 0.37 0.146 0.199 0.215 0.115 0.174 0.222 CMHS D 9 0.237 0.191 0.132 0.37 0.137 0.159 0.178 0.152 0.174 HPSC E 10 0.147 0.041 0.049 0.22 0.148 0.180 0.256 0.068 0.199 0.264 HVSC C 10 0.606 0.091 0.111 1.41 0.676 0.455 0.914 0.264 0.306 0.439 KPOC D 8 0.339 0.013 0.012 0.20 0.052 0.186 0.099 0.067 LINC D 10 0.437 0.034 0.020 0.12 0.028 0.026 0.065 0.114 0.062 0.073 LPCC D 9 0.290 0.025 0.018 0.92 0.294 0.146 0.639 0.068 0.437 NBLC D 6 0.025 0.129 0.232 0.214 0.040 0.201 NNBS E 8 0.206 0.042 0.039 0.67 0.156 0.239 0.198 0.070 PPHS D 10 0.221 0.048 0.091 0.21 0.062 0.118 0.122 0.074 0.116 0.138 PRPC E 9 0.214 0.054 0.087 0.63 0.223 0.299 0.341 0.089 0.290 REHS D 10 0.252 0.081 0.245 0.52 0.101 0.188 0.264 0.086 0.204 0.254 RHSC D 9 0.210 0.282 0.28 0.075 0.083 0.194 0.202 0.159 0.159 ROLC D 10 0.340 0.013 0.022 0.18 0.013 0.036 0.045 0.111 0.102 0.062 SHLC D 10 0.175 0.072 0.156 0.33 0.116 0.245 0.184 0.076 0.262 0.275 SMTC D 10 0.176 0.020 0.034 0.16 0.034 0.132 0.085 0.078 0.066 0.148 TPLC D 10 0.266 0.058 0.032 0.11 0.024 0.037 0.065 0.250 0.068 0.081 1 As defined by the NZ Loadings Standard, NZS1170.5 (2004), i.e. B=rock; C=shallow soil; D=deep or soft soil; E=very soft soil. Site class1 25 Frequency 20 15 10 5 0 -2 -1 0 10 10 10 Geometric mean peak ground acceleration, PGA (g) Figure 2: Histogram of the geometric mean PGA values observed at the 20 stations during the 10 earthquake events. For each event, all strong motion stations within the event-specific maximum distance, πππ₯ π ππ’π , (Table 1) were used to compute the between-event residuals with respect to empirical ground motion prediction equations (GMPEs). In some events, for example the 4 September 2010 event, this included several other strong motion stations in addition to those in Table 2, however in the majority of the smaller ππ€ events, only these 20 strong motion stations were considered. COMPARISON OF NZ-SPECIFIC GMPE WITH THE CANTERBURY EARTHQUAKES The representation of (pseudo) spectral acceleration (SA), from event π, at a single location s, for the purposes of ground motion prediction, is generally given by: ππππ΄ππ = πππ (πππ‘π, π π’π) + πΏπ΅π + πΏπππ (1) where ππππ΄ππ is the (natural) logarithm of the observed SA; πππ (πππ‘π, π π’π) is the median of the predicted logarithm of SA as given by an empirical GMPE, which is a function of the site and earthquake rupture considered; πΏπ΅π is the between-event (or inter-event) residual with zero mean and variance π 2 ; and πΏπππ is the within-event (or intra-event) residual with zero mean and variance π 2 . Based on equation (1), empirical ground motion prediction equations can provide the distribution of SA as: ππππ΄ππ ~π(πππ , π 2 + π 2 ) (2) where π~π(ππ , ππ2 ) is short-hand notation for π having a normal distribution with mean ππ and variance ππ2 . Figure 3 illustrates the PGA observations for the 10 considered events as compared to the NZ-specific site class D prediction of Bradley (2010, 2013a) (herein βBradley (2010)β). It is noted that none of the ground motions from the Canterbury earthquake sequence were used in the development of the Bradley (2010) GMPE. Comparisons between predicted and observed SA ordinates at vibration periods of 0.2, 0.5, 1.0, 1.5, and 3.0 seconds can be found in Bradley (2013b, Appendix 1). On the basis of Figure 3 it can be seen that the Bradley (2010) model: (i) exhibits good scaling of PGA amplitudes with source-to-site distance, π ππ’π , even for very near-source distances; and (ii) provides a consistent prediction of ground motions from events of different magnitudes. The same trends for PGA are apparent for SA at various vibration periods (Bradley 2013b, Appendix 1). In addition, as shown in Figure 18 of Bradley (2013a), the within-event residuals are independent of distance with a standard deviation that is consistent with the model standard deviation. It is also worth noting that several large events occurred in quick succession in the Canterbury earthquake sequence. For example, on 13 June 2011 and 23 December 2011 two large events (ππ€ 5.3/6.0 and ππ€ 5.8/5.9, respectively) occurred approximately 80mins apart (see times in Table 1). Both of these events occurred near the east of Christchurch, which has soft surficial soil deposits. As a result, it is speculated that the ground motions recorded in the latter event of these two sequences were affected by the surficial soils having elevated pore water pressures from the strong shaking in the earlier event. Such speculation would be expected to result in a general over prediction of short period SA amplitudes and an under prediction of long period SA amplitudes because of the reduced stiffness of the soft surficial soils due to elevated pore pressures, which is somewhat evident in the PGA observations in Figure 3, as discussed in greater detail by Bradley (2013b). Despite this postulated phenomena, no explicit account of such effects is considered in the subsequent empiricallybased analyses. The above results and discussion implies that the Bradley (2010) model provides, generally-speaking, an unbiased prediction of the 10 considered events as a function of various model parameters. However, Figure 3 also alludes to the significant variability in the observations for a given set of model parameters. A large portion of this variability arises due to systematic features of the specific sites at which the ground motions were recorded; features which are not adequately captured in the simple parameterization used in GMPEs. The subsequent sections therefore examine the between- and within-event residuals obtained for the Bradley (2010) GMPE in order to ascertain these site specific systematic effects. B C D E Peak ground acceleration, PGA (g) Bradley (2010) ο€Be/ο΄=-1.214 -1 10 B C D E -2 10 0 Bradley (2010) ο€B /ο΄=1.31 16 April 2011 e -1 10 B C D E -2 0 10 0 10 -1 10 B C D E -2 0 10 1 23 December 2011 (12:58pm) Bradley (2010) ο€Be/ο΄=-0.299 -1 10 B C D E -2 10 0 10 1 10 Source-to-site distance, Rrup (km) 0 1 10 Source-to-site distance, Rrup (km) Bradley (2010) ο€Be/ο΄=-0.217 22 February 2011 0 10 -1 10 B C D E -2 10 0 1 10 Source-to-site distance, Rrup (km) 0 10 Bradley (2010) ο€Be/ο΄=-0.108 13 June 2011 (1:01pm) -1 10 B C D E -2 10 0 10 10 Source-to-site distance, Rrup (km) 0 10 -2 10 1 Bradley (2010) ο€Be/ο΄=-0.579 B C D E 10 10 Source-to-site distance, Rrup (km) 13 June 2011 (2:20pm) 10 -1 10 10 Source-to-site distance, Rrup (km) 0 Bradley (2010) ο€Be/ο΄=-0.434 19 October 2010 1 10 10 0 10 10 Peak ground acceleration, PGA (g) Peak ground acceleration, PGA (g) 0 26 December 2010 2 10 10 10 Peak ground acceleration, PGA (g) 1 10 Source-to-site distance, Rrup (km) Peak ground acceleration, PGA (g) 0 Peak ground acceleration, PGA (g) -2 10 Peak ground acceleration, PGA (g) -1 10 1 10 Source-to-site distance, Rrup (km) 0 10 21 June 2011 Bradley (2010) ο€Be/ο΄=-0.124 -1 10 B C D E -2 10 0 10 Peak ground acceleration, PGA (g) Peak ground acceleration, PGA (g) 10 10 Peak ground acceleration, PGA (g) Bradley (2010) ο€Be/ο΄=-0.092 4 September 2010 0 1 10 Source-to-site distance, Rrup (km) 0 10 23 December 2011 (2:18pm) Bradley (2010) ο€Be/ο΄=-0.492 -1 10 B C D E -2 10 0 10 1 10 Source-to-site distance, Rrup (km) Figure 3: Comparison of the Bradley (2010) GMPE (for site class D) with PGA observations from the 10 considered events including values of the normalized between-event residual, πΉπ©π /π. NON-ERGODIC GROUND MOTION PREDICTION The Bradley (2010) GMPE, and GMPEs in general, is based on the ergodic assumption, i.e. the time-averaged behavior of a random process at a given location is the same as the space-averaged behavior at given instants in time. Practically speaking, the ergodic assumption is invoked when ground motion records from different locations around the globe are combined without discrimination for the purposes of ground motion prediction at a single location. Several studies have illustrated that the ergodic assumption generally leads to an over-prediction of ground motion uncertainties because it combines variability in source, path and site effects from different tectonic regions and sites, and some of this variability may in fact be systematic in a site-specific context (Anderson and Brune 1999). The ergodic assumption can be relaxed by considering that the between- and within-event residuals, given in Equation (1), are no longer purely random variables with zero-mean, but systematically depart from this for a given earthquake source (or source region) and given site of interest. The contemporary non-ergodic methodology for considering such effects employed here has also been adopted by Lin et al. (2011), Walling (2009), and Rodriguez-Marek et al. (2011), among others, and notational convention herein generally follows Al Atik et al. (2010). Firstly, the between-event residual, πΏπ΅π , is separated into a systematic event location-to-location (herein simply βlocation-to-locationβ) residual (for location l), πΏπΏ2πΏπ , and 0 0 a βremainingβ between-event residual, πΏπ΅ππ (i.e. πΏπ΅π = πΏπΏ2πΏπ + πΏπ΅ππ ). Secondly, the within- event residual, πΏπππ , is separated into a systematic βsite-to-siteβ (sometimes also referred to as βstation-to-stationβ (Rodriguez-Marek et al. 2011)) residual (for site s), πΏπ2ππ , and a βremainingβ within-event residual, πΏπππ 0 (i.e. πΏπππ = πΏπ2ππ + πΏπππ 0 ). As a result, Equation (1) can be re-written as: 0 ππππ΄ππ = πππ (πππ‘π, π π’π) + (πΏπΏ2πΏπ + πΏπ΅ππ ) + (πΏπ2ππ + πΏπππ 0 ) (3) It should be noted that no consideration here is given to a path-specific effect in the within-event residual, as done so by Lin et al. (2011), for example. The principal reason for this omission is that only near-source recordings from moderate-to-large magnitude earthquakes are considered. As a result, ray paths from different sub-faults in the idealized rupture plane can be quite different. This makes determination of the specific ray path to be used in consideration of spatial correlation and path-specific effects non-unique. Furthermore, since only events in the relatively small geographic region of Canterbury are considered, any systematic path effects are likely to be simply represented in the systematic location-to-location residual. Finally, it is noted that all 10 earthquake events considered here are taken to be from the same βCanterburyβ region so that all events are considered to have the same location-to-location residual, πΏπΏ2πΏπ . Subsequent analyses illustrate that this residual is not a function of event magnitude. BETWEEN-EVENT RESIDUAL AND ITS COMPONENTS As noted in Equation (3), the between-event residual, πΏπ΅π , is considered to be comprised of two parts. The systematic location-to-location residual can be computed as the mean value of πΏπ΅π from all the events considered: ππΈ (4) 1 πΏπΏ2πΏπ = β πΏπ΅π ππΈ π=1 where ππΈ is the number of events (i.e. ππΈ = 10 in this study). For each event the βremainingβ portion of the between-event residual, πΏπ΅π0, can then be computed from: 0 πΏπ΅ππ = πΏπ΅π β πΏπΏ2πΏπ (5) 0 By definition, since πΏπΏ2πΏπ is the mean of πΏπ΅π , πΏπ΅ππ has zero mean. In addition to their 0 mean values, both πΏπΏ2πΏπ and πΏπ΅ππ are uncertain. The uncertainty in πΏπΏ2πΏπ results from the fact that it is computed from a finite number of events, and hence its variance can be computed from: 2 πππ[πΏπΏ2πΏπ ] = ππΏ2πΏ = π πΜ 2 ππΈ (6) where πΜ 2 is the sample variance of the between-event residuals, πΏπ΅π . The variance in the βremainingβ between-event residual can be computed simply from statistical inference of the 0 values of πΏπ΅ππ : ππΈ 2 ππ0 = 0 ] πππ[πΏπ΅ππ 1 0 2 ) = β(πΏπ΅ππ ππΈ β 1 π=1 (7) WITHIN-EVENT RESIDUAL AND ITS COMPONENTS As noted in Equation (3), the within-event residual, πΏπππ , is considered to be comprised of two parts. The systematic site-to-site residual can be computed for each site (i.e. strong motion station) as the mean value of πΏπππ from all the events considered: ππΈπ 1 πΏπ2ππ = β πΏπππ ππΈπ (8) π=1 where ππΈπ is the number of events at site π . Since not all events are recorded at the same set of locations then ππΈπ β€ ππΈ, and the value of ππΈπ for each site is given in Table 2. Once πΏπ2ππ has been computed, the βremainingβ within-event residual can be computed as: πΏπππ 0 = πΏπππ β πΏπ2ππ (9) By definition, since πΏπ2ππ is the mean of πΏπππ , πΏπππ 0 has zero mean. In addition to their mean values, both πΏπ2ππ and πΏπππ 0 are uncertain. The uncertainty in πΏπ2ππ results from the fact that it is computed from a finite number of events, and hence its variance can be computed from: πππ[πΏπ2ππ ] = 2 ππ2ππ πΜ 2 = ππΈπ (10) where πΜ 2 is the sample variance of the within-event residuals, πΏπππ . The variance in the βremainingβ within-event residual can be computed simply from statistical inference of the values of πΏπππ 0 : ππΈπ 2 ππ 0 1 = πππ[πΏπππ 0 ] = β(πΏπππ 0 )2 ππΈπ β 1 (11) π=1 NON-ERGODIC PREDICTION Having characterized the components of the between- and within-event residuals and their sub-components in the previous section it is now possible to obtain the mean and variance of the non-ergodic GMPE. The mean value of ππππ΄ππ is given by: πΈ[ππππ΄ππ ] = πππ + πΏπΏ2πΏπ + πΏπ2ππ (12) 0 ] = πΈ[πΏπππ 0 ] = 0. Note that, in general, the index l in πΏπΏ2πΏπ is obtained based since πΈ[πΏπ΅ππ on the geographic location of site s and therefore ππ΄ππ and πππ omit this index for brevity. Because ππ΄ππ has a lognormal distribution then it follows that the median value of ππ΄ππ can be obtained as the exponential of the mean of ππππ΄ππ : ππππππ[ππ΄ππ ] = ππ₯π{πΈ[ππππ΄ππ ]} (13) In examining the systematic effects, πΏπΏ2πΏπ and πΏπ2ππ , it is useful to consider a βsystematic amplification factorβ which is the ratio of the non-ergodic to ergodic median GMPE predictions. Taking the ratio of Equation (13) and Equation (2) gives: ππππππ[ππ΄ππ ]ππππππππππ = ππ₯πβ‘(πΏπΏ2πΏπ + πΏπ2ππ ) ππππππ[ππ΄ππ ]πππππππ (14) In terms of the prediction variance, making the conventional assumption that the different residuals are uncorrelated, the variance of the non-ergodic prediction can be obtained as: 2 2 2 2 πππ[ππππ΄ππ ] = (ππΏ2πΏ + ππ0 ) + (ππ2ππ + πs0 ) π (15) For each of the between-event, within-event, and total residuals, a standard deviation reduction factor can be computed for the ratio of the non-ergodic and ergodic standard deviations: 2 2 ππΏ2πΏ + ππ0 π β π πΉπ = π2 π πΉπ = β 2 2 ππ2ππ + ππ 0 π2 2 2 2 2 ) (ππΏ2πΏ + ππ0 ) + (ππ2ππ + ππ 0 π β π πΉππ = π 2 + π2 (16) (17) (18) OBSERVED SYSTEMATIC EFFECTS FROM THE CANTERBURY EARTHQUAKES BETWEEN-EVENT RESIDUAL Figure 4 illustrates the computed values for πΏπ΅π as a function of SA vibration period for the 10 events considered (specific results for PGA are not shown herein as they are numerically equivalent to those for SA(0.01)). Also shown in Figure 4 is the systematic location-to-location residual, πΏπΏ2πΏ. It can be seen that for short vibration periods (π~ < 0.3π ) the value of πΏπΏ2πΏ is approximately zero, illustrating that the Bradley (2010) GMPE is, on average, unbiased for these short vibration periods, across the events and strong motion stations considered. However, as the vibration period increases the value of πΏπΏ2πΏ increases. Bradley (2012c) and Bradley and Cubrinovski (2011) have suggested that greater than predicted SA amplitudes at long periods in the 4 September 2010 and 22 February 2011 events, respectively, could be the result of: (i) near-source forward directivity; (ii) nonlinear response of soft surficial soils; (iii) basin-induced surface waves; and (iv) inherent model bias as a result of a limited amount of reliable ground motion records at long vibration periods. While all these points are plausible on a single ground motion observation by observation basis, the observations in Figure 4 are based on sites in the Canterbury region located at various azimuths from 10 different earthquake events. Firstly, forward directivity rupture effects would not systematically affect sites at the range of azimuths considered, and such effects would not be significant for smaller magnitude events. Secondly, as the majority of the stations considered are located on the Canterbury alluvial deposits, nonlinear response of surficial soils may be of importance, since only ground motions from moderate-to-large magnitude earthquakes at close distances were considered (e.g. the average PGA of the considered motions 0.183g (i.e. Figure 2)), and also basin-induced surface waves are likely of importance. Finally, while inherent model bias is a possibility for very long periods (i.e. π > 5π ), it is unlikely at shorter periods (i.e. T=1s), and therefore this is not considered as a significant factor in the observed departure from zero in Figure 4. Between-event residual, ο€ Be 1.5 1 Single event Mean for all events, ο€L2L 0.5 0 -0.5 -2 10 -1 0 10 10 Vibration period, T (s) 10 1 Figure 4: Computed between-event residuals, πΉπ©π , and the location-to-location residual, πΉπ³ππ³. The dependence of the between-event residuals as a function of event magnitude for five different vibration periods is illustrated in Figure 5. It can be seen that there is no apparent (i.e. statistically significant) trends in πΏπ΅π as a function of event magnitude. The only noteworthy observation is the relatively large πΏπ΅π values from the ππ€ 5.0 event on 16 April 2011. Without further investigation, the reason for this is not immediately apparent. Hence, for a given vibration period, the assumption that the location-to-location residual is a constant (i.e. is not dependent on event magnitude) is reasonable. Between-event residual, ο€ Be 1.0 0.5 0.0 PGA SA(0.2) SA(0.5) SA(2.0) SA(5.0) -0.5 -1.0 4.5 5.0 5.5 6.0 6.5 Magnitude, Mw 7.0 7.5 Figure 5: Variation in between-event residuals with magnitude for five different vibration periods. WITHIN-EVENT RESIDUALS By considering the within-event residuals at each strong motion station site during the 10 events, systematic site effects can be ascertained via Equation (8). Bradley (2013b, Appendix 1) provides the within-event residuals as a function of vibration period for all 20 strong motion station sites considered, and because of space limitations only a subset are presented here. Figure 6a-c illustrate, for example, the within-event residuals and the systematic site effect at CBGS, LINC, and HVSC, respectively. It can be seen in Figure 6a that the ground motions observed at the CBGS (Canterbury Botanic Gardens) site is on average similar to that predicted by the median of the Bradley (2010) model, with πΏπ2ππ being close to zero for all vibration periods. Figure 6b illustrates that LINC (Lincoln) generally has ground motion observations which are lower than that predicted by the Bradley (2010) model, with πΏπ2ππ generally slightly less than zero. Finally, Figure 6c illustrates that HVSC (Heathcote Valley) generally has ground motion observations which are significantly greater than predicted at short periods and less than predicted at long periods, consistent with the identified basin-edge effects at this location (Bradley 2012a). Figure 6a-c illustrate that different strong motion stations have systematic site specific residuals, πΏπ2ππ , which depart from zero. Figure 6d illustrates these πΏπ2ππ residuals for all 20 strong motion stations considered, as well as the median, 16th and 84th percentiles of these πΏπ2ππ values. It can be seen that, on average, the values of πΏπ2ππ for the 20 strong motion stations considered are very close to zero. This is largely expected, given that the betweenevent residual is used to give a within-event residual which is random with approximately zero mean (Lindstrom and Bates 1990). However, Figure 6d serves to clearly illustrate that while the Bradley (2010) model employing the ergodic assumption is generally unbiased, a significant amount of the observed variability is the result of systematic site effects. 2 Individual record 1.5 1 0.5 0 -0.5 -1 Mean for all records ο€S2Ss -1.5 -2 -2 10 -1 0 10 10 Vibration period, T (s) 10 2 Station: HVSC 1.5 1 0.5 0 -0.5 -1 -1.5 -2 -2 10 2 Station: LINC 1.5 1 0.5 0 -0.5 -1 -1.5 -2 -2 10 1 (d) Site-specific residual, ο€ S2Ss Within-event residual, ο€ W es (c) (b) Station: CBGS Within-event residual, ο€ W es Within-event residual, ο€ W es (a) -1 0 10 10 Vibration period, T (s) 10 1 1 All stations 0.5 0 -0.5 -1 -2 -1 0 1 -1 0 10 10 10 10 10 10 Vibration period, T (s) Vibration period, T (s) Figure 6: Within-event residuals, and the site specific effect, πΉπΊππΊ, at:CBGS (Christchurch Botanical Gardens); LINC (Lincoln); HVSC (Heathcote Valley); and (d) site specific effect, πΉπΊππΊ, for all stations considered. 10 1 The dependence of the within-event residuals on ground motion intensity is illustrated in Figure 7 based on the PGA of each ground motion. The dependence based on spectral acceleration ordinates at each vibration period provided similar insight, and therefore is not explicitly presented here. 18 of the 20 stations considered illustrated trends similar to Figure 7a and Figure 7b, where no apparent trend of πΏπππ with PGA is evident. In contrast, Figure 7c and Figure 7d illustrate that at LPCC and KPOC there is a clear trend of high-intensity ground motions resulting in larger πΏπππ residuals. For LPCC, this trend is seemingly apparent across all vibration periods, while for KPOC this trend is only apparent at short-tomoderate vibration periods (i.e. π β€ 1π ). These results for 18 out of 20 stations (such as shown in Figure 7a Figure 7b) demonstrate that, in general, the consideration of nonlinear soil effects in the Bradley (2010) GMPE (which is based on Chiou and Youngs (2008)) is 1.5 (b) Within-event residual, ο€ W es 0.15 0.2 Station: CACS 0.5 0 -0.5 -1 ο€S2S -1.5 -2 10 (c) 0.1 PGA (g) Within-event residual, ο€ W es 0.05 1 -1 0 10 10 Vibration period, T (s) 10 (b) 2 0.2 0.4 PGA (g) 1.5 0.6 Station: LPCC 0.5 0 -0.5 -1 -1.5 ο€S2S -1 0.1 0 10 10 Vibration period, T (s) 0.15 0.2 1 0.25 PGA (g) 0.3 0.35 Station: CHHC 0.5 0 ο€S2S -0.5 -1 0 10 10 Vibration period, T (s) 10 1 2 0.8 1 -2 -2 10 1.5 -1 -2 10 1 Within-event residual, ο€ W es Within-event residual, ο€ W es (a) 1.5 0.05 0.1 0.15 0.2 PGA (g) 0.25 0.3 Station: KPOC 1 0.5 0 -0.5 ο€S2S 10 1 -1 -2 10 -1 0 10 10 Vibration period, T (s) Figure 7: Ground motion intensity dependence of within-event residuals at: (a) CACS (Canterbury Aero club); (b) CHHC (Christchurch hospital); (c) LPCC (Lyttelton Port); and (d) KPOC (Kaiapoi North school). 10 1 consistent with the observed strong ground motions. Hence, for 18 of the 20 stations considered, the assumption that the within-event residual, πΏπππ , is constant for a given vibration period is adequate. For the LPCC and KPOC stations πΏπππ should be considered explicitly as a function of the ground motion intensity for the purpose of non-ergodic ground motion prediction. It is noted that the intensity-dependence of πΏπππ at LPCC and KPOC may be indicative that the site classification of these sites (i.e site classes B and E, as given in Table 2) provides a poor prediction of their true site response for the range of ground motion intensities examined. SYSTEMATIC MEDIAN AMPLIFICATION FOR SPECIFIC SUB-REGIONS IN CHRISTCHURCH The location-to-location and site-to-site residuals (πΏπΏ2πΏπ and πΏπ2ππ , respectively) presented in the previous sections, in combination with Equation (12), allows for non-ergodic site-specific prediction of ground motions at the 20 strong motion stations from earthquakes in the Canterbury region. For the purposes of developing design ground motions for the Christchurch region it also desirable to develop predictions which can be utilized over broad sub-regions of Christchurch, rather than only at a specific site location. This section examines the πΏπ2ππ residuals in order to develop such sub-region predictions. Systematic site-to-site residuals for various sub-regions of Christchurch Based on the examination of the πΏπ2ππ residuals as a function of vibration period, surfical geology, geographical proximity, and the authors judgment, it was considered reasonable to group 15 of the 20 considered stations into four different subgroups: (i) Central Business District (stations CBGS, CCCC, CHHC, REHS; (ii) βWestern suburbsβ (stations CACS, TPLC, ROLC, LINC); (iii) βEastern suburbsβ (stations SHLC, PRPC, HPSC, NNBS, KPOC); and (iv) βNorthern suburbsβ (stations PPHS and SMTC). The remaining 5 stations did not exhibit characteristics which, in the authorβs opinion, allowed them to be grouped easily, and are discussed subsequently. Figure 8 illustrates the site-specific residuals for various stations by sub-region, as well as the mean residual for each sub-region. Figure 8a illustrates that the four sites in the central business district (CBD) have similar πΏπ2ππ residuals with vibration period, with residuals of approximately zero for vibration periods less than 0.3s, then increasing over the range of T=0.3-4.0 s. The value of the residuals over this range are similar for three sites (CBGS, CCCC, CHHC), but the residuals for the REHS station between vibration periods of T=0.42.0s are notably larger, inferred to be the result of several meters of peat deposits at this location (Canterbury Geotechnical Database 2011). Figure 8b illustrates the site-specific residuals at four locations on the western extent of the Christchurch urban area, in which the surficial soils are comprised primarily of gravelly deposits (Brown and Weeber 1992, Cubrinovski and McCahon 2011). In contrast to the πΏπ2ππ residuals in the CBD region (Figure 8a) it can be seen that the site-to-site residuals at these locations lie typically in the range of -0.5 to 0.0, except for T>4s, where the effects of the deep sedimentary basin generally lead to πΏπ2ππ >0. 1 REHS 0.5 Mean 0 -0.5 -1 -2 10 (c) (b) Central Business District (CBGS, CCCC, CHHC, REHS) Site-specific residual, ο€ S2Ss Site-specific residual, ο€ S2Ss (a) -1 0 10 10 Vibration period, T (s) 10 (d) Site-specific residual, ο€ S2Ss Site-specific residual, ο€ S2Ss Eastern suburbs (SHLC, PRPC, HPSC, NNBS, KPOC) KPOC 0.5 0 Mean -0.5 -1 -2 10 -1 0 10 10 Vibration period, T (s) 10 1 Western suburbs (CACS, TPLC, ROLC, LINC) 0.5 Mean 0 -0.5 -1 -2 10 1 1 1 1 -1 0 10 10 Vibration period, T (s) 10 1 Northern suburbs (PPHS, SMTC) 0.5 Mean 0 -0.5 -1 -2 10 -1 0 10 10 Vibration period, T (s) Figure 8: Site-specific residuals for various sub-regions: (a) Central Business District(CBD); (b) βWestern Suburbsβ; (c) βEastern Suburbsβ; and (d) βNorthern Suburbsβ. Figure 8c illustrates the site-to-site residuals in the eastern suburbs of urban Christchurch, as well as Kaiapoi to the north of urban Christchurch (Figure 1). While there is a slightly greater variability among the πΏπ2ππ residuals across these five stations than for the 10 1 aforementioned results in Figure 8a and Figure 8b, it can be seen that residuals, on average, have a mean value close to zero across the range of vibration periods. The large πΏπ2ππ residual for the KPOC station for T>4s is the result of the deep sediments in the Pegasus basin, which results in strong wave-guide effects, as clearly observed in the 4 September 2010 Darfield earthquake (Bradley 2012c) which contributed to large liquefaction in various areas of Kaiapoi (Cubrinovski et al. 2010) despite a relatively large distance from the rupture source. Figure 8d illustrates the site-to-site residuals of the PPHS and SMTC stations located in the northern suburbs of urban Christchurch. For T<0.2s it can be seen that these sites exhibit average πΏπ2ππ residuals in the range of -0.5 to -0.3. Between T=0.2-0.7s the residuals, on average, increase from approximately -0.5 to 0.2; and for T>0.7s the residuals vary, on average, between 0.1 and 0.3. Locations which donβt conform to sub-region categories The RHSC (Riccarton High School) station is a relatively standard site class D site, but with relatively strong SA amplitudes in the range π = 0.2 β 0.4π , which is approximately the natural period of the siteβs shallow surficial soils. The CMHS (Cashmere High School), HVSC (Heathcote Valley), and LPCC (Lyttelton Port) stations are all affected by the shallow depth of the strong impedance contrast with the Banks Peninsula volcanics, which underlie the alluvial deposits at the surface, and respond in ways that cannot be generalized among them. Finally, the NBLC site, while being located in the eastern suburbs, is actually located on a sand dune region, and therefore exhibits a short period site response more a-kin to a stiffer soil site. The systematic πΏπ2ππ residuals for these sites are presented subsequently. Comparison of all sub-regions Figure 9a illustrates the variation in site-to-site residuals, πΏπ2ππ , for the four main subregions of Christchurch, as well as the HVSC, LPCC, CMHS, RHSC, and NBLC stations which donβt conform to these main four sub-regions. As previously noted with respect to Figure 6d, it can be seen that there is a large variability between the systematic πΏπ2ππ for the different sub-regions and other outlying locations. For short vibration periods (π < 0.2π ), the HVSC station has the largest positive πΏπ2ππ residual, while the NBLC site has the largest negative πΏπ2ππ residual. The LPCC station also has a notable positive residual, while the North and Western suburbs have notable negative residuals, and all others (i.e. CBD, East, CMHS, and RHSC) have near zero residuals. For moderate-to-long vibration periods there is significant fluctuation of the residuals for each sub-region or location as a function of 1 CBD West East North HVSC LPCC CMHS RHSC NBLC 0.5 0 -0.5 Systematic amp. factor, exp( ο€ L2L+ ο€ S2S) Systematic site-to-site residuals, ο€ S2S vibration period. -1 -2 10 -1 0 10 10 Vibration period, T (s) 10 1 2.5 CBD West East North HVSC LPCC CMHS RHSC NBLC 2 1.5 1 0.5 -2 10 -1 0 10 10 Vibration period, T (s) 10 1 Figure 9: Comparison of various sub-regions and other locations in Christchurch: (a) site-to-site residuals; and (b) systematic median amplification factors from systematic location-to-location and siteto-site effects. Figure 9b illustrates the systematic amplification factor which would be applied to the median ground motion prediction (i.e. Equation (14)). Relative to Figure 9a, the most notable feature is the contribution of the πΏπΏ2πΏπ residual for long vibration periods (i.e. Figure 2), which causes all sub-regions and other locations to have amplification factors greater than 1.0 for long vibration periods. For the Christchurch CBD, in particular, it can be seen that the amplification factor is approximately 1.0 for T<0.2, then increases to a value of approximately 1.8 from π = 0.5 β 2s, contains a minor localized increase for π = 2 β 4π , and then gradually increases up to values 2.2 for π = 10π . Parametric forms of these systematic effects for the four sub-regions (i.e. CBD, and Western, Eastern, Northern suburbs) are developed in Bradley (2013b) for use in Canterbury-specific seismic hazard analysis for the ongoing Christchurch rebuild. The implications of these amplification factors for ergodic and non-ergodic prediction are examined in a subsequent section as compared to ground motion observations. NON-ERGODIC STANDARD DEVIATIONS Between-event standard deviations In order to fully incorporate non-ergodic aspects into a GMPE it is necessary to modify both its median and standard deviation prediction. Figure 10a presents the ergodic betweenevent standard deviation of the Bradley (2010) model, π, in comparison with the standard deviation in the location-to-location residual, ππΏ2πΏ π ; that of the βremainingβ between-event residual, π0 ; and their SRSS combination. It can be seen that, even with only 10 events, the value of ππΏ2πΏπ is notably smaller than π0 (i.e. β10β‘times smaller, as per Equation (6)). This is also true for the within-event residuals, and therefore herein only the combined standard deviation for the between- and within-event residuals is examined. For π β€ 0.3π the nonergodic between-event standard deviation is on the order of 85% of the ergodic standard deviation (i.e. π πΉπ = 0.85 in Equation (16)), while for π > 1s it becomes an increasing smaller proportion of the ergodic value, taking a value as small as 60% for π = 10s. Hence, it can be seen that the non-ergodic between-event standard deviation is relatively constant for the range of vibration periods considered, in contrast to the ergodic standard deviation which increases notably for long vibration periods. Since long-period ground motion is dominated by large scale features of the seismic source, and propagation through the earthβs crust and local sedimentary basins, it is not surprising that gross differences in tectonics and crustal/basin structure from worldwide events (used in the ergodic model) lead to a notably larger long period between-event standard deviation than those specifically for the Canterbury region and Canterbury earthquake sequence (used in the non-ergodic model). Within-event standard deviations The within-event standard deviations of the ergodic Bradley (2010) model are a function of event magnitude and the level of nonlinearity in the site response portion of the model. Because the variation in the within-event standard deviation due to these factors is notably Between-event standard deviation 0.7 0.6 ο΄(ergodic) ο΄0 0.5 ο΄L2L 0.4 l (ο΄20+ο΄2L2L )1/2 l 0.3 0.2 0.1 0 -2 10 -1 0 10 10 Vibration period, T (s) 10 1 Figure 10: Ergodic and non-ergodic between-event standard deviation components. The ergodic withinevent standard deviation of Bradley (2010) is magnitude dependent and therefore the average value over all 10 events is depicted. larger than the variation in the between-event standard deviation, it is more instructive to examine the non-ergodic within-event standard deviation on the basis of its ratio to the ergodic within-event standard deviation (i.e. π πΉπ given in Equation (17)). Figure 11 presents the reduction in the within-event standard deviation as a function of vibration period for the 20 different strong motion stations which were considered. On average across the 20 stations, it can be seen that the within-event standard deviation ranges from π πΉπ = 0.65 β 0.85 over the spectrum of vibration periods, with smallest values at long vibration periods, and largest values at moderate periods (π = 0.2 β 0.6π ). Despite the fact that, on average, the non-ergodic standard deviation is less than the ergodic standard deviation, it can be seen that in several instances (both several sites and several vibration periods) π πΉπ > 1, indicating that the non-ergodic standard deviation is greater than the ergodic standard deviation. Total standard deviation Similar to Figure 11, Figure 12 presents the reduction in the non-ergodic vs. ergodic total standard deviation as a function of vibration period for the 20 different strong motion stations which were considered. It can be seen that the reduction factor values for the total standard deviation are very similar to the within-event standard deviation β a consequence of the ο¦ Reduction in within-event stdev., RF 1.6 1.4 1.2 1 0.8 0.6 0.4 0.2 -2 10 -1 0 10 10 Vibration period, T (s) 10 1 Figure 11: Reduction in the within-event standard deviation of the non-ergodic model as compared to the ergodic model for all stations, the subset of CBD stations, and the proposed design parameterization. fact that the within-event standard deviation is notable larger than the between-event standard deviation, and hence it is the dominant contributor to the total standard deviation. It should be noted that the mean, 16th and 84th percentile values of the reduction factors are presented for the purposes of illustration, but the reduction factors for specific sites or subregions (available from the author on request) should be used if non-ergodic ground motion prediction is considered for site- or sub-region-specific seismic hazard analysis. Individual station Reduction in total stdev., RF ο³ T 1.6 1.4 1.2 1 0.8 0.6 0.4 Mean of all stations 0.2 -2 10 -1 16th and 84th percentiles 0 10 10 Vibration period, T (s) 10 1 Figure 12: Reduction in the βtotalβ standard deviation of the non-ergodic model as compared to the ergodic model for all stations, the subset of CBD stations, and the proposed design parameterization. COMPARISON OF NON-ERGODIC STANDARD DEVIATION REDUCTION WITH PREVIOUS STUDIES Figure 13 provides a comparison of the non-ergodic total standard deviation reduction obtained in this study with those of previous studies, which are classified into two types. The first are so-called βsingle stationβ non-ergodic studies in that only the site-to-site systematic effect (i.e. πΏπ2ππ ) is considered, such as Lin et al. (2011) (L11), Chen and Tsai (2002) (CT02), Atkinson (2006) (A06), Rodriguez-Marek et al. (2011) (RM11), and Ornthanammarath et al. (2011) (O11). The second are so-called βsingle-path single-stationβ non-ergodic studies that consider systematic site, path and source effects, such as L11, A06 and Morikawa et al. (2008) (M08). Firstly, it can be seen that the βsingle stationβ studies generally result in a smaller mean reduction in total standard deviation than the mean obtained in the present study. This is consistent with the notion that this study also considered the location-to-location systematic effect, πΏπΏ2πΏπ . Secondly, it can be seen that βsingle-path single-stationβ studies result in a greater mean reduction in total standard deviation than the mean obtained in this study. This can be attributed to the additional patheffect considered in such studies, which was ignored here. It may also be a result of the fact that the aforementioned studies have generally used small amplitude ground motions, so that additional uncertainty resulting from nonlinear site effects is not scrutinized. Reduction in total stdev., RF ο³ T 1.6 1.4 Single-station studies [L11,CT02,A06,RM11,O11] min-max range 1.2 16th-84th percentile range Mean 1 0.8 0.6 0.4 0.2 0.01 Single-path single-station studies [L11, A06, M08] 0.1 1 Vibration period, T (s) 10 Figure 13: Comparison of the reduction in the total standard deviation from non-ergodic consideration in this study compared with previous studies. PGA results from other studies plotted at T=0.01s. In addition to the above comments, Figure 13 also serves to re-iterate the significance of the variation in the reduction of the total standard which can occur on a site-by-site basis. Figure 13 illustrates, for example, that while the mean reduction factor is on the order of 0.80 for short periods, the 16th-84th percentile confidence interval is on the range of nearly 0.601.0. Therefore, it is clear that caution should be exercised when considering the use of mean reduction factors for application to cases which do not have sufficient site-specific data to directly constrain the standard deviation. SUB-REGION-SPECIFIC GROUND MOTION PREDICTION GENERAL CONSIDERATIONS When considering the sub-region-specific residuals (i.e. the mean of the systematic site residuals given in Figure 8 and Figure 9a) for use in non-ergodic seismic hazard analysis for the Canterbury region several considerations are necessary. It should be noted from the outset that there is no guarantee that at a specific site located within the sub region will display the same response as that of the instrumented sites upon which the sub-region is characterized. Despite this, it is the fact that the sub-region factors are based on strong ground motions that make the use of sub-region factors appealing. There are several possibilities by which the consistency of a specific site under consideration could be assessed with respect to a generic sub region. Firstly, instruments can be deployed at the site to record ground motions. Since the recorded ground motions will most likely be small amplitude (due to the infrequent nature of strong motion shaking) then such residuals would ideally be compared for the same event with those obtained at the pre-existing instrumented sites which were used to develop the sub-region residuals (since these sites have recorded strong ground motions). Secondly, geotechnical and geological information (i.e. site characterization) at the site can be utilized to demonstrate that the site considered is consistent with the properties of the instrumented sites in the sub region. In either of the above two cases, the additional uncertainty due to the determination of the consistency of a specific site with respect to a given sub-region should also be included in the total prediction uncertainty. Failing either of the two forms of quantitative information sources noted above, it is possible that sub-region-specific ground motion prediction could be performed by adopting the Canterbury-specific non-ergodic median prediction for the sub region (i.e. Equation (14)) with a partially non-ergodic variance comprising the non-ergodic between-event variance 2 2 (i.e. ππΏ2πΏ + ππ0 ) with the ergodic within-event variance (i.e. π 2 ). This is the approach which π is demonstrated in the following section. COMPARISON OF ERGODIC AND NON-ERGODIC PREDICTIONS Having developed non-ergodic modification factors for the Bradley (2010) GMPE, it is useful to directly examine the relative comparison between these two predictions and observations from notable scenario ground motions from the Canterbury earthquake sequence. Figure 14 compares the difference in predictions from the ergodic and non-ergodic Bradley (2010) model with two ground motions for each of the 4 September 2010 and 13 June 2011 (2:20pm) events. Non-ergodic predictions at the CCCC and REHS stations in Figure 14a and Figure 14b are based on the βCBDβ specific modification; at TPLC based on the βWestern suburbsβ modification; and at HVSC based on the HVSC-specific modification (i.e. Figure 9b). Examination of Figure 14 illustrates that, on average, the non-ergodic prediction provides a closer comparison to the observations than the ergodic prediction. This is expected given that the non-ergodic prediction is basically βcalibratedβ using these same observations (true validation would require a mutually distinct set of observed ground motions). However, it is also important to note that the median non-ergodic prediction is not always closer to the observation on a single event-by-event basis. This is illustrated in Figure 14a for π = 0.3 β 1.5π , for example, where the geometric mean of the observation is closer to the median of the ergodic prediction than the non-ergodic median prediction. DISCUSSION: COMPARISON WITH CHEN AND FACCIOLI (2013) Following submission of this paper, Chen and Faccioli (2013) published an analysis of single-station sigma from a subset of stations in the Canterbury region. There are several notable differences between the current work and that in Chen and Faccioli which warrant discussion. The dataset adopted in this work focuses on large amplitude ground motions of engineering significance. All 10 considered events in this study utilize finite fault models (and thus the π ππ’π source-to-site distance). In contrast, Chen and Faccioli utilize a larger dataset of 65 events (concentrated in the range of M4.2-5.0 and of several tens of kilometers (Chen and Faccioli 2013)), only one event of which is considered as a finite fault. In terms of strong motion stations considered, 8 of the 14 stations considered by Chen and Faccioli, are the same as those from the 20 stations considered in this work. The Bradley (2010) GMPE, adopted in this work, was specifically developed for NZ conditions based on the examination of existing foreign GMPEs, and is presently utilized in NZ PSHA. In contrast, the Faccioli et al. (2010) GMPE has not been previously considered for PSHA in New Zealand (the evidence presented in Chen and Faccioli does not allow for a sufficient assessment of its applicability), and the Boore and Atkinson GMPE was illustrated by Bradley (2013b) to contain several biases with respect to NZ ground motion prediction (particularly for Mw<5 which comprises the majority of the Chen and Faccioli dataset). In addition, for both the Faccioli et al. and Boore and Atkinson GMPEs, Chen and Faccioli use assumed Eurocode site classes and values for the NZ-based site classes without validation. In the authorβs opinion it is necessary that non-ergodic ground motion prediction studies utilize a GMPE which is unbiased with respect to the considered dataset in order to obtain robust results. The site-to-site residuals at stations CHHC, LPCC, and HVSC presented in Chen and Faccioli are broadly consistent with those obtained here, but differ in details due to the differences in dataset and adopted GMPE. While Figure 9 of Chen and Faccioli attempts to consider the dependence of site residuals on three bins of ground motion intensity it should be noted that the largest bin (PGA>0.5m/s^2, which corresponds to 0.05g) is still for very small levels of ground motion intensity. Furthermore, in viewing Figure 6 of Chen and Faccioli it is not clear how many observations are within each of the three PGA bins, and therefore if the differences observed are statistically significant. The dataset in the present study has an average PGA of 0.18g and the majority of ground motions are well above 0.05g, and hence Figure 7 of the present study provides a robust assessment of the effects of ground motion intensity on site-to-site residuals. CONCLUSIONS This study has examined ground motion observations from the most significant 10 events in the 2010-2011 Canterbury earthquake sequence at near-source sites to scrutinize the New Zealand (NZ)-specific Bradley (2010) GMPE and develop region-specific modification factors based on relaxing the conventional ergodic assumption. It was observed that the location-to-location residual (i.e. systematic feature of the between-event residuals) had values close to zero for short-to-moderate vibration periods, but became increasingly positive for π >1s, likely indicative of important Canterbury-specific sedimentary basin and nearsurface soil effects which are not adequately accounted for in the Bradley (2010) GMPE. In general, the site-to-site residuals were found to be independent of ground motion intensity, however for the LPCC (Lyttelton Port) and KPOC (North Kaiapoi) stations there was an apparent dependence on ground motion intensity; likely indicating that the nonlinear site response at these sites is not well characterized by their designated site classes (B:rock and E:very soft soil, respectively). On the basis of the similar site-to-site residuals, 15 of the 20 stations were adequately grouped into four sub-regions, while the remaining 5 stations did not fit any of these general sub-regions. The grouping of sites into sub-regions allows the 10 10 -1 -2 Station:CCCC Rrup=16.3 km 4 September 2010 10 Spectral Acc, Sa (g) Spectral Acc, Sa (g) 10 0 Geometric mean observation Bradley (2010) non-ergodic Observation Ergodic Non-ergodic 10 10 Bradley (2010) ergodic -1 10 0 10 10 1 0 rup -1 -2 Observation Ergodic Non-ergodic 10 -1 13 June 2011 (2:20pm) 10 10 10 -1 -2 -3 Observation Ergodic Non-ergodic 10 -1 0 13 June 2011 (2:20pm) Station:HVSC Rrup=4.7 km 0 Spectral Acc, Sa (g) Spectral Acc, Sa (g) 10 10 10 1 Period, T (s) Period, T (s) 10 Station:REHS R =15.9 km 4 September 2010 10 0 10 1 10 10 Station:TPLC Rrup=21.6 km -1 -2 -3 Observation Ergodic Non-ergodic 10 -1 10 0 Period, T (s) Period, T (s) Figure 14: Comparison of the ergodic and non-ergodic forms of the Bradley (2010) GMPE prediction compared to observations: (a) CCCC (Christchurch Cathedral College); (b) REHS (Resthaven); (c) HVSC (Heathcote Valley); and (d) TPLC (Templeton). Note that both horizontal components and the geometric mean of the observed response spectra are illustrated. possibility of non-ergodic ground motion prediction over sub-regions of Canterbury, rather than site-specific predictions only at strong motion stations. Examination of the standard deviations in the residuals illustrates that, on average, the non-ergodic standard deviation is 65-85% of the ergodic standard deviation of the Bradley (2010) model. However, on a site-by-site basis this average ratio can easily vary by ±0.2 units. 10 1 ACKNOWLEDGEMENTS Financial support provided by the New Zealand Earthquake Commission is greatly appreciated. Constructive comments from both Adrian Rodriguez-Marek and Fabrice Cotton, who alerted the author to the recent work of Chen and Faccioli (2013), are greatly acknowledged. REFERENCES Al Atik, L., Abrahamson, N., Bommer, J. J., Scherbaum, F., Cotton, F., Kuehn, N., 2010. 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