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Regional Saltwater Disposal Facility Planning Utilizing Data Analytic Methods Chad E. Kronkosky, P.E. CEK Engineering LLC, Texas Tech University Amin Ettehadtavakkol, Ph.D. Texas Tech University Outline • • • • • • Introduction Data-Driven Predictive Analytics State of the Saltwater Disposal Industry Spatial Optimization of Saltwater Disposal Facility Sites Future Research / Software Development Summary What Exactly is Data Analytics? Why is it Important to the Saltwater Disposal Industry? INTRODUCTION What is Data Analytics? • • • • • Mathematics & Statistics Information Theory Computer Science Visualization Data Mining Why is Data Analytics Important to the SWD Industry • The SWD Industry is an inherently complex; significant opportunities for capital optimization! • • • If we build it they will come strategies fail – Not knowing thy need! We can install a facility anywhere, right? – Not knowing thy geology/regulations! We can service all your disposal needs – Not knowing thy customer or thy self! • Applying data analytic methodologies allows for rapid answers/response • • • Specific targeting of developing plays, customers… with a detailed understanding current SWD asset picture – We now know thy need! Geologic/Regulatory spatial models can give us an understanding of expected injectivity rates, and allowable reservoirs – We now know thy geology/regulations! Rapid identification of optimal Customer/SWD asset pairing; does if make since to take on this account – We now know thy Customer and thy self! Application of Data-Driven Predictive Analytics Workflow DATA-DRIVEN PREDICTIVE ANALYTICS SWD DDPA Workflow (Asset Location & Transportation Optimization) Data Collection & Database Construction • TRRC UIC Database • • • • IHS U.S Well Data • • Lease/Well Spatial Locations IHS U.S. Production Data • • Commercial SWD Identification Detailed Wellbore Info. Injectivity Info. Water Production Estimates U.S. Census TIGER Roads • GIS Layer for Potential Facility Sites (i.e. next to US/FM roadways or paved surfaces) SWD DDPA Workflow (Asset Location & Transportation Optimization) Data Preparation • • • ETL & SQL Queries built to validate information; typically performed by IT professionals Subject Matter Experts (SME) help IT establish business rules and validation parameters Knowledge provided by SME’s helps alleviate spurious conclusions SWD DDPA Workflow (Asset Location & Transportation Optimization) Exploratory Analysis • • • This involves the core technical knowledge of SME (engineering geology, financial) Incorporates gathered data into integrated descriptive/predictive analyses (classical statistics, data mining, artificial intelligence/machine learning, optimization, GIS) IT and SME all contribute to develop models and workflow modules which seek to provide outputs which aid the business process SWD DDPA Workflow (Asset Location & Transportation Optimization) Predictive Modeling • • • Correlation structures are obtained from the exploratory analysis. Quantitative/Qualitative outputs identifying uncertainty/sensitivity are developed. Data analytic tools (regression, optimization, etc.) are incorporated to maximize the use of disparate data sources. An analysis of regional transportation patterns STATE OF THE SWD INDUSTRY State of the SWD Industry (at least in Texas) • By the Numbers (Texas) • • • • Produced/Flowback Water Represents a Substantial Portion of the Lifetime Operating Expense Incurred by Oil and Gas Assets • • • In 2013, 7.15 Billion bbls of produced water was disposed of in the State of Texas (4 bbl produced water for every 1 BOE) If only 30% of this volume was transported by trucking; 16.5 Million vehicle trips would be required. Based on preliminary research; each haul requires ~ 50 miles of driving; 825 Million Miles of driving across the state Disposal cost can be minimized through the minimization of disposal hauling distances and driver standby charges We observe excessive hauling distances (> 25 miles), with regular frequency, taking place in regards to commercial SWD The Following as a Transportation Pattern Case Study for Andrews County, TX (January 2013) Andrews County, TX (01/2013) SWD Lease Locations and Their Respective SWD Facilities Andrews County, TX (01/2013) SWD Lease Routing and Their Respective SWD Facilities Andrews County, TX (01/2013) SWD Lease Routing for SWD’s in the County Andrews County, TX (01/2013) SWD Facilities Lease Routing Distances A heuristic random search algorithm for gridded networks SPATIAL OPTIMIZATION OF SWD FACILITY SITES How Do We Spatially Optimize SWD Facility Site Locations • Project Delineation • • • Import Datasets • • • Incorporate production data, GIS dataset into a geospatial database Utilize a routing algorithm to perform distance/time estimates (we used Google Map Direction API) Subdivide and Aggregate • • • • Specify spatial and temporal boundaries and constraints (e.g. maximum facility disposal rates, maximum hauling distance, etc.) These boundaries can be at the lease/field scale, or larger regional scales, county/basin Subdivide the project extents into a gridded network Aggregate produced/injected water volumes by temporal range for each grid cell Determine Net Produced Water for each grid cell (NPW = Produced – Injected) Remove and Filter • Filter and remove from the gridded network cells with negative NWP. These cells will likely represent areas with significant secondary/tertiary recovery operations How Do We Spatially Optimize SWD Facility Site Locations • Specify Potential SWD Facility Site Locations • • • • Sample Candidate SWD Site Locations • • • Calculate a distance matrix to grid cell centers. This matrix is used to collect nearest neighbor grid volumes (until volume constraint is reached) for each Candidate Site Location. Grid Cell Center to Candidate SWD Facility Sites Routing • • Sample a random roadway point within each grid cell (if one exists); these points will represent Candidate SWD Facility Sites within the project extents. An order of precedence can be implemented (i.e. 1. State Hwy, 2. FM, 3. US) Grid Cell Center Distance Matrix • • In almost every instance SWL Facility Sites will be located near or at roadway ROW’s GIS roadway layers can be utilized to establish roadway points for Candidate SWD Facility Sites Roadway criteria can be incorporated (i.e. only US/State Hwy/FM roadways) Calculate routing estimates for each grid cell to each candidate SWD Facility Site Random Search for Global Optimum (not global but close enough!) • • • Randomly sample a grid cell; collect grid cell neighbors until SWD Facility volume constraint met. Search for nearest Candidate SWD Facility Site; remove the NPW grid cells and Facility site from there respective lists Repeat process until all NWP grid cells are removed Applications to other industry problems? FUTURE RESEARCH & SOFTWARE DEVELOPMENT Future Research and Software Development • Adapt Current Algorithm to Handle Generalized Cases • • • • • Include the ability to handle SWD pipelines (minimum distance threshold) Mileage and duration estimates are based on the grid center of the randomly sampled grid cell. This should be based on actual the lease/well centroids (and weighted by number of trips) Produced water being disposed of at existing facilities is not accounted for in the algorithm. A cost function should be included (e.g. a greedy collection strategy based on reduced hauling distance/duration) Develop a stochastic/Monte Carlo simulator to estimate future SWD demands within project extents Develop a WebApp SAAS Platform in the Next 18-24 Months • Proof of concept/prototype spring/summer 2017 Wrapping it up! SUMMARY Summary / Acknowledgements • The SWD Industry is complex! • • • Supply/Demand issues; Offset Competition; Injectivity/Regulatory (e.g. Induced Seismicity) Apply DDPA methodologies, we believe significant improvements can be achieved in regards to optimizing hauling distance/durations (20-30% reductions appear to achievable). Be on the look out for our open source project on CRAN Spring/Summer 2017 • This research would not have be possible without the “R” Statistical Software Community! • Thank you for your time! Regional Saltwater Disposal Facility Planning Utilizing Data Analytic Methods Chad E. Kronkosky, P.E. CEK Engineering LLC, Texas Tech University Amin Ettehadtavakkol, Ph.D. Texas Tech University