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2013 California Statewide Critical Peak Pricing Evaluation

2013 California Statewide Critical Peak Pricing Evaluation. Josh L. Bode Candice A. Churchwell DRMEC Spring 2014 Load Impacts Evaluation Workshop San Francisco, California May 2014. Presentation overview. Introduction and comparison of rates PG&E Results SCE Results SDG&E Results

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2013 California Statewide Critical Peak Pricing Evaluation

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  1. 2013 California Statewide Critical Peak PricingEvaluation Josh L. BodeCandice A. ChurchwellDRMEC Spring 2014 Load Impacts Evaluation WorkshopSan Francisco, CaliforniaMay 2014

  2. Presentation overview • Introduction and comparison of rates • PG&E Results • SCE Results • SDG&E Results Appendix: Evaluation methodology

  3. Event days are different across the three utilities • System load patterns across utilities are not always coincidental, particularly for Northern and Southern California • Comparisons in impacts between the utilities should be made with caution • No event day was common to all utilities. • PG&E called 8 events • SCE called 10 events • SDG&E called 4 events • Each utility calls event days based on their system conditions • SDG&E’s events last from 11 AM to 6 PM while PG&E’sand SCE’s last from 2 to 6 PM

  4. Average event day percent reductions by utility are in a similar range • PG&E’s average load reduction per customer was 8.6% (22.4 kW). • SCE’s average load reduction per customer was 5.8% (14.2 kW). • SDGE’s average load reduction per customer was 6.9% (18.4 kW).

  5. 2013 reductions were slightly larger than last year’s • PG&E and SDG&E average event conditions were hotter • PG&E showed the largest jump in reductions from 30 to 38 MW, due to both more participants and larger percent reductions • The customer mix has evolved substantially over time but response has been consistent • Even when enrollments seem similar, customers exit and join, leading to changes

  6. PG&E Specific Results

  7. PG&E’s average load reduction was 8.6%, or 38.4 MW, across the 8 events in 2013

  8. PG&E detailed event load impacts * Unofficial event ** Avg. event estimates do not include the unofficial event

  9. PG&E’s demand reductions were concentrated in two industries • Manufacturing; Wholesale & Transport; and Agriculture, Mining, & Construction accounted for 41% of the load and over 75% of impacts • While the Offices, Hotels, Finance, Services sector had the most load, 36%, it accounted for only 16% of program impacts

  10. Not surprisingly, the largest customers account for a large share of the demand reductions Avg. • On a percentage basis, reductions were similar for large and smaller customers alike

  11. 1. Model loads absent DR as a function of temperature and month 2. Estimate loads absent DR for 1-in-2 and 1-in-10 conditions Ex ante estimates relied on available historical data 5. Combine loads and percent reductions 3. Model historical percent impacts as a function of weather 4. Estimate percent impacts under 1-in-2 and 1-in-10 conditions • There is no robust empirical data about how medium customers will respond when default to CPP • Percent impacts were based on the historical 2012–2013 industry specific percent load reductions as a function of weather. • Medium reference loads were developed by using a representative sample of customers and estimated by LCA and industry. • The industry specific percent load reductions were then applied to medium customer loads.

  12. Ex ante percent reductions are inline with historical percent reductions • 2012 and 2013 events used as basis for ex ante • Estimates were produced by LCA • Comparison is based on: • Historical customers • Same event window and historical events • Assumes percent reductions of new customers in LCA will be similar

  13. Reference loads align with historical loads • References loads were separately estimated for large and medium customers by LCA • Comparison is based on: • Historical customers • Same event window and historical events • New large customers are assumed to be similar to old ones

  14. Comparison of 2013 ex ante year estimates to prior year estimates • Differences are mostly due to changes in the enrollment forecasts • 2014 ex ante impacts align well with the 2013 avg. event response • Over time, customers who reduce demand have tended to remain on CPP, while those less likely to respond have migrated elsewhere

  15. Due to limited empirical data, ex ante estimates for medium customers have a higher degree of uncertainty

  16. SCE Specific Results

  17. SCE’s average load reduction was 5.8%, or 35.5 MW, across the 10 event days in Jul-Sep 2013

  18. SCE detailed event load impacts

  19. Two industry groups account for 87% of the demand reductions • Manufacturing accounts for roughly 27% of customers and load but provides 68% of the reductions • Wholesale and transport accounts for 17% of the customers and load but provides 12% of the reductions

  20. At SCE, larger customers not only have more load but also deliver larger percent reductions Average

  21. Ex ante percent reductions line up with historical percent reductions • 2012 and 2013 events used as basis for ex ante • Estimates were produced by area • Comparison is based on: • Historical customers • Same event window and historical events • Assumes percent reductions of new customers by area will be similar

  22. Comparison of 2013 ex ante year estimates to prior year estimates • 2013 estimates reflect the evolution of SCE’s default CPP customers and more recent historical data • 2014 ex ante impacts align well with the 2013 avg. event response, 35.5 MW • Over time, customers who reduce demand have tended to remain on CPP, while those less likely to respond have migrated elsewhere

  23. SDG&E Specific Results

  24. SDG&E’s average weekday load impact was 6.9%, 19.6 MW

  25. SDG&E detailed event load impacts

  26. SDG&E had more customers and load in the offices sector • Offices made up 46% of the load at SDG&E (versus 36% and 23% at PG&E and SCE). They also reduced demand more. • Institutional and Wholesale & Transport segments still performed the best and accounted for a substantial share of impacts.

  27. At SDG&E, larger customers also accounted for a large amount of the demand reductions Average • On a percentage basis, there is no discernable pattern of responsiveness by size

  28. Ex ante percent reductions are inline with 2012–2013 historical percent reductions • 2012 and 2013 events used as basis for ex ante • Comparison is based on: • Historical customers • Same event window and historical events

  29. Ex ante reference loads align with historical loads

  30. Comparison of 2013 ex ante year estimates to prior year estimates • Differences are due to small changes in the estimated percent reductions • The 2013 estimates incorporate more historical data (2012 and 2013 events v. 2012 alone)

  31. Due to limited empirical data, ex ante estimates for medium customers have a higher degree of uncertainty • Impacts are based on large default CPP, but adjusted for differences in the industry mix and size of medium customers

  32. For comments or questions, contact:Josh L. Bode, M.P.P. jbode@nexant.com Candice A. Churchwell, M.S. cchurchwell@nexant.com Nexant, Inc.101 Montgomery St., 15th FloorSan Francisco, CA 94104415-777-0707

  33. Appendix Evaluation Methodology and Validation

  34. The focus on the evaluation was on the dispatchable event day response • CPP rates introduce two changes: • Higher prices on peaks hours of critical days (CPP adder) designed to encourage customers to reduce demand • Rate discounts during non-event days to offset CPP adder • The impact of the rate discount on non-event days is not estimated for three reasons: • Focus for planning and operations is on the dispatchable demand reductions that can be attained • The pre-enrollment data needed to quantify non-event day impacts is too distant (four or five years prior) • Most non-event day impacts, if any, are now embedded in system load forecasts (and not incremental) • Analyses in 2010 and 2011 did not find statistically significant impacts due to the rate discount

  35. The ex post evaluation used the best available method for commercial and industrial customers • For commercial customers, the estimates rely on difference-in-differences panel regressions. • Observe how the control and participant groups behave during both event and non-event days. • Method is less likely to be an artifact of the model selected. It better captures behavior during event days without comparable weather conditions. • Approach works best with: • Ample control group candidates • There are many observable variables • Non-event or pre-enrollment data • A small number of customer does not dominate the load and/or reductions • These use an external control group and non-event day data. • This approach was used for weather-sensitive commercial customers: institutional/governmental industries, offices, hotels, finance, services, and retail stores. • This approach was used for less weather-sensitive industrial customers, and for those commercial customers that could not be matched with a suitable control customer. • For industrial customers (and commercial customers without a successful match), impacts were estimated using customer-specific regressions. • Electricity usage patterns on non-event days are used to estimate what customers would have done if an event had not been called (a within-subjects method). • Approach works: • For very large customers (where a valid control group may not be possible) • Customers with low weather sensitivity • When non-event day conditions are similar to event days (often not the case)

  36. Individual Regressions – some 2013 events lacked comparable non-event days • PG&E example using raw aggregated data for summer weekdays without any modeling • Some of the noise is explained through day of week, seasonal effects and customer specific weather • Generally customer specific regression are better suited for industrial customers

  37. Difference-in-differences uses information from a control group and information for hot non-event days Hourly loads for a well-matched control group nearly mirror the loads of the CPP population on event-like days. These small differences are subtracted from the difference between control and CPP population loads on actual event days – the difference-in-differences. Difference-in-differences

  38. The non-event control days were selected to match event conditions as closely as possible • We matched non-event days to historical events based on system loads, temperature, day of week and program year. • Comparable proxy days are not available for some days with very extreme weather.

  39. The validation tests show that the hybrid method out-performs other alternatives • Impacts are estimated for the proxy event days, using the same models and process used for the ex post evaluation. If a method is accurate, it produces impact estimates for the average event that center on zero and are insignificant because, in fact, there is no event. • The impacts when CPP event day prices were not in effect are near zero and the reference loads estimated via the control group match the CPP participant loads.

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