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1
Paper ID: 14TD0194
Data Mining Applications for Smart Grid
in Japan
Hiroyuki Mori
Dept. of Network Design
Meiji University
Nakano-ku, Tokyo 171-0042
Japan
[email protected]
2
OUTLINE
1.
Objective
2.
Background
3.
Classification
of
Data
Mining
Methods in Japan
Applications of Data Mining to Smart
Grid Operation in Japan
Case Study: Load Forecasting
Conclusion
4.
5.
6.
3
I. OBJECTIVE
To Present
Recent Trends on Data
Mining Applications for Smart Grid
Operation in Japan
4
II. BACKGROUND
Factors of Complexity in Smart Grid Operation
Demand
Response
EV Charging
/Discharging
Energy
Storage
Load
Variations
Renewable
Energy
Smart Grid
CO2 Emission
Markets
Fig. 1 Uncertainty of Smart Grid
Power
Markets
Fuel
Markets
5
II. BACKGROUND
Open Problems in SG Operation
• To Construct More Accurate Models
under Uncertainty
• To Evaluate the Upper and the Lower
Bounds of
the Variables with High
Accuracy
• To Create Adaptive Models Efficiently
• To Select Input Variables from the
Candidates Appropriately
Intelligent Systems
Expert Systems
Inference
ANN
Learning
Fuzzy
Classification
Meta-Heuristics
Optimization
Multi Agent Syst.
Distributed
Systems
Data Mining
Fig. 2
Knowledge
Discovery in DB
Intelligent Systems for Smart Grid
6
7
II. BACKGROUND
How to Extract
Feature Variables?
Data Mining !
Big Data Base
“Data Explosion”
Fig. 3 Data Explosion and Feature Variables
8
II. BACKGROUND
Needs of Data Mining
I. To Obtain Rules That Explain the
Relationship between Input and
Output Variables
II. To Identify Important Input Variables
for an Output Variable
III. To Play a Role as a Preprocessing
Technique, i.e., to Extract Features of
Variables
9
II. BACKGROUND
Typical Methods of Data Mining
•
•
•
•
•
Statistical methods
Artificial Neural Network (ANN)
Neuro-fuzzy model
Fuzzy Inference
Decision Trees
10
III. Classification of Data Mining Methods in Japan
Table 1 Data Mining Applications for SG in Japan
No.
Application Areas
Methods
Keywords
Year
1
Load Forecasting
RT +ANN
Hybrid IS
2001
2
Load Profiling
RT
Classification
2002
3
Electricity Price Forecasting
RT +ANN
Hybrid IS
2003
4
Fault Detection
RT +ANN
Hybrid IS
2004
5
Voltage Security Assessment
RT +ANN
Index L
2005
6
Wind Speed Forecasting
RT +GP
Hybrid IS
2006
7
Credit Risk Evaluation for Markets
RF+ANN
Ensemble Learning
2007
8
Distribution Network Loss Min
RT
Optimization
2008
9
Voltage Security Assessment
RT +ANN
CPFLOW
2009
11
III. Classification of Data Mining Methods in Japan
Classification Trees
Regression Tree + ANN
Decision Trees
Regression Trees
Regression Tree + GP
III. Classification of Data Mining Methods in Japan
IS1
IS2
(a) Cascading Type
#1
IS1
Clustering
,DM, Data
Transform
.
.
.
IS2
.
.
.
#n
IS2
Reference
H. Mori and A.Yuihara,
"Deterministic Annealing
Clustering for ANN-Based
Short-term Load
Forecasting, " IEEE
Trans. on Power Systems,
Vol. 16, No. 3, pp. 545-551,
Aug. 2001
(b) Precondition Type
Fig. 4 Examples of Hybrid IS Structure
12
III. Classification of Data Mining Methods in Japan
Regression
Tree(CART)
TN1
ANN1
TN2
ANN2
TNk
ANNk
Fig. 5 Integration of RT and ANN
13
II. BACKGROUND
DB > 90.95
LDMAX > 21468.5
LDMAX > 20003.5
T1
T2
T4
PLDH > 14.5
T5
T10
LDMAX > 25157.5
YR > 2000
T3
YR > 2000
DY > 21
T9
DT > 2
T6
T7
T8
Right:YES
Left :NO
Fig.6 Example of Regression Tree
15
IV. Applications of Data Mining to Smart Grid Operation in Japan
Table 1 Data Mining Applications for SG in Japan
No.
Application Areas
Methods
Keywords
Year
1
Load Forecasting
RT +ANN
Hybrid IS
2001
2
Load Profiling
RT
Classification
2002
3
Electricity Price Forecasting
RT +ANN
Hybrid IS
2003
4
Fault Detection
RT +ANN
Hybrid IS
2004
5
Voltage Security Assessment
RT +ANN
Index L
2005
6
Wind Speed Forecasting
RT +GP
Hybrid IS
2006
7
Credit Risk Evaluation for Markets
RF+ANN
Ensemble Learning
2007
8
Distribution Network Loss Min
RT
Optimization
2008
9
Voltage Security Assessment
RT +ANN
CPFLOW, Saddle
2009
V. Case Study: Load Forecasting
• Simulation Conditions
Data : Daily Maximum Loads of Chubu Electric Power
Company (CEPCO) on week days in summer from June
to September for 12 years (1991-2002).
Learning: 1991-2001(12100), Test: 2002 (110)
•
The candidates for meteorological input variables for CART
Taved;1: Average Temperature on Day d+1,
Tmaxd+1: Maximum Temperature on Day d+1,
Tmind+1: Minimum Temperature on Day d+1,
Waved+1: Average Wind Speed on Day d+1
Hmind+1: Minimum Humidity on Day d+1,
Dd+1 : Daylight on Day d+1,
Cd+1 : Discomfort Index on Day d+1
Wd+1 : Average Wind Speed on Day d+1
16
References
H. Mori and A. Takahashi, " Hybrid Intelligent Method
of Relevant Vector Machine and Regression Tree for
Probabilistic Load Forecasting," Proc. of IEEE PES
ISGT Europe 2011, 6 pages, Manchester, UK, Dec.
2011.
Hokkaido
Tohoku
Japan Sea
Fukushima
KEPCO
x
x
TEPCO
Kyushu
+
SEPCO
CEPCO
Fig. 7 Location of CEPCO
18
(a) Conventional Method
To Evaluate One-day Ahead Daily Maximum Load Forecasting
w1d
...
Fig. 8 (a) Conventional Methods
wdn
Predictor
yˆ d 1
Predictor
yˆ d 1
Predictor
yˆ d 1
yd
...
Fig. 8(b) Ideal Conditions
w1d 1
n
d 1
w
yd
Fig. 8(c) Proposed Methodn
wd
Predictor
Predictor
yd
...
w1d
wˆ 1d 1
wˆ
n
d 1
19
V. Case Study: Load Forecasting
Case 1: MLP Model Corresponding to Fig. 8(a)
Case 2: MLP Model Corresponding to Fig. 8(c)
Case 3: GP Model Corresponding to Fig. 8(c)
Case 4: RVM Model Corresponding to Fig. 8(c)
Case 5: CART and RVM Model Corresponding to
Fig. 8(c) <Proposed Method>
Case 6: MLP Model Corresponding to Fig. 8(b)
<Reference>
Note) GP: Gaussian Process with Heretical Bayesian Estimation
RVM: Relevant Vector Machine
20
Predicted Ave. Tmp
Yes
Td+1ave25.35
Predicted Max. Tmp
Max. Load on the day
Yes
Yes
Td+1ave22.85
Yes
Yes
Yes
LdM0.066
LdM0.533
TN1
LdM0.739
TN4
TN3
TN7
Yes
max32.95
Td+1
TN2
TN6
Td+1max33.25
TN5
TN8
Fig. 9. Regression Tree of One-day Ahead Maximum Load.
21
Observations
• Three Input Variables, i.e., Predicted Average
Temperature(Td+1ave), Maximum Load on the Day (LdM)
and
Predicted
Maximum
Temperature(Td+1max)
Constructed the Optimal Regression Tree.
• Daily Maximum Load Data Was Classified into 8
Terminal Nodes. For Example, Terminal Node 8
Corresponds to Hot Days with the Rules
(Td+1ave>25.35, LdM>0.739, and Td+1max>33.25). On the
Other hand, Terminal Node 1 Belong to Cool Days
with the Rules (Td+1ave=<22.85, LdM=<0.553).
V. Case Study: Load Forecasting
12.00
10.49
Maximum Error
Average Error
10.00
42% Reduction
Error [%]
8.00
6.41
6.34
6.14
6.04
6.00
4.00
5.13
3.69
52% Reduction
1.95
2.00
1.88
1.81
1.78
1.48
0.00
Case 1
Case 2
Case 3
Case 4
Case 5
Case 6
Fig. 11 Max. and Average Errors of Each Case
23
24
VI. CONCLUSION
•We Investigated Data Mining Applications for
Smart Grid in Japan in Terms of the Methods
and Applications.
•In Addition, We Introduced Case Study on Daily
Maximum Load Forecasting of Chubu Electric
Power Company.