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HomeMy WebLinkAbout20230201Forsyth Direct.pdf DAVID J. MEYER VICE PRESIDENT AND CHIEF COUNSEL FOR REGULATORY & GOVERNMENTAL AFFAIRS AVISTA CORPORATION P.O. BOX 3727 1411 EAST MISSION AVENUE SPOKANE, WASHINGTON 99220-3727 TELEPHONE: (509) 495-4316 DAVID.MEYER@AVISTACORP.COM BEFORE THE IDAHO PUBLIC UTILITIES COMMISSION IN THE MATTER OF THE APPLICATION ) CASE NO. AVU-E-23-01 OF AVISTA CORPORATION FOR THE ) CASE NO. AVU-G-23-01 AUTHORITY TO INCREASE ITS RATES ) AND CHARGES FOR ELECTRIC AND ) NATURAL GAS SERVICE TO ELECTRIC ) DIRECT TESTIMONY AND NATURAL GAS CUSTOMERS IN THE ) OF STATE OF IDAHO ) GRANT D. FORSYTH FOR AVISTA CORPORATION (ELECTRIC AND NATURAL GAS) Forsyth, Di 1 Avista Corporation I. INTRODUCTION 1 Q. Please state your name, business address and present position with 2 Avista Corporation. 3 A. My name is Dr. Grant D. Forsyth and my business address is 1411 East 4 Mission Avenue, Spokane, Washington. I am presently assigned to the Financial Planning 5 and Analysis Department as Chief Economist. 6 Q. Would you briefly describe your educational background and 7 professional experience? 8 A. Yes. I am a graduate of Central Washington University with a Bachelor of 9 Arts Degree in Economics, the University of Oregon with an MBA in Finance, and 10 Washington State University with a Ph.D. in Economics. Before joining Avista in April 11 2012, I was a tenured faculty member in the Department of Economics at Eastern 12 Washington University. In my 13-year career at EWU, beginning in 1999, I specialized in 13 money and banking, macroeconomics, international finance, and regional economic 14 analysis. The majority of my academic research used applied econometrics. Prior to EWU, 15 I worked in the Czech Republic as an academic economist (1996-1997) and private sector 16 economist (1997-1999) in the Czech financial industry. My financial industry position was 17 the Director of Research for a diversified Czech financial holding company. In this position 18 I oversaw a staff doing both equity and macroeconomic research. 19 Q. What are your current job duties at Avista? 20 A. My primary job duties at Avista include generating the customer and load 21 forecasts for electric and natural gas operations,1 and generating the peak load forecast for 22 1 My forecasts are used by the Company’s Financial Planning and Analysis department in the development of the financial forecast. It is also frequently used as modeling inputs by the Company’s Energy Supply Department, led by Company witness Mr. Kinney. Forsyth, Di 2 Avista Corporation electric operations. I also participate in various external policy groups, such as the 1 Washington Governor’s Council of Economic Advisors and Washington’s Citizen 2 Commission for Performance Measurement of Tax Preferences. 3 Q. What is the purpose of your testimony in this proceeding? 4 A. First, my testimony describes the inflationary pressures facing the Company 5 that Company witness Mr. Vermillion discussed in his testimony, and which Company 6 witness Ms. Andrews uses as support for her electric and natural gas Pro Forma 7 Miscellaneous O&M Expense adjustments, which reflect escalated increases in certain 8 Company O&M and A&G expenses above test period levels. Second, I will discuss the 9 proposed methodology changes to the Company’s weather normalization process. 10 Q. Are you sponsoring any exhibits to be introduced in this proceeding? 11 A. No, I am not. 12 13 II. INFLATIONARY IMPACTS ON GROWTH RATES 14 Q. Please describe the inflationary environment facing the Company 15 today. 16 A. Because of the supply chain disruptions caused by the COVID pandemic, 17 and more recently the effects of the war in the Ukraine, markets are experiencing escalating 18 inflation rates at both the consumer and producer (business-to-business) level. Escalating 19 inflation impacts the cost of the goods and services purchased by the Company. 20 Historically, the length of time (often called a “spell”) that inflation remains above the long-21 run average is strongly correlated with the size of the inflation spike. Figure No. 1 below 22 demonstrates this point by looking at spells of producer price inflation that have exceeded 23 the long-run average. 24 Forsyth, Di 3 Avista Corporation Figure No. 1: Relationship Between Duration of Inflation Spell and Inflation Severity 1 2 3 4 5 6 7 8 9 10 The underlying producer price inflation data for Figure No. 1 is the All Commodity 11 Producer Price Index (PPIACO) calculated by the Bureau of Labor Statistics.2 The monthly 12 PPIACO data extends back to 1913. Since 1913, average annual PPICO inflation has been 13 about 3.1%. Using this average, it is possible to examine spells of inflation consistently 14 above 3.1% and those spells’ correlation to the maximum year-over-year, same month 15 inflation that occurred during that spell. Between 1913 and 2020, the U.S. experienced 32 16 spells of above average (over 3.1%) inflation ranging in duration from one month to 130 17 months. Figure No. 1 plots the duration (in months) of each spell against the maximum 18 year-over-year, same month inflation rate that occurred during that spell. The red-dotted 19 2 U.S. Bureau of Labor Statistics, Producer Price Index by Commodity: All Commodities [PPIACO], retrieved from FRED, Federal Reserve Bank of St. Louis; https://fred.stlouisfed.org/series/PPIACO. The calculation “year-over-year, same month” means calculating monthly inflation rates relative to the same month in the previous year. Performing this calculation since 1913 and taking the average produces a long- run growth rate of 3.1%. A similar value is produced if one just uses the annual PPICO index to calculate inflation rates since 1913. The PPIACO covers a broad range of products, which can be found at https://www.bls.gov/web/ppi/ppitable09.pdf. Starting in July 2009, services were added to the PPPIACO. A description of the different Producer Price Indexes can be found at https://www.bls.gov/news.release/ppi.tn.htm. Forsyth, Di 4 Avista Corporation line in Figure No. 1 shows the regression relationship between the spell duration and the 1 maximum inflation rate (year-over-year, same month basis) during that spell. 2 Q. With all of that background, what should one glean from that 3 information? 4 A. The point of Figure No. 1 is that the regression line clearly shows that on 5 average, the higher the inflation spike, the longer the duration of the inflation spell. Figure 6 No. 2 below shows year-over-year, same month growth for the PPIACO calculated by the 7 Bureau of Labor Statistics for the period 2020 through 2022. 8 Figure No. 2: Recent Producer Inflation Behavior 9 10 11 12 13 14 15 16 17 18 19 20 21 Figure No. 2 shows that a new above average inflation spell started in February 22 2021. By November 2021, the year-over-year, same month growth rate exceeded 20% and 23 peaked around 23%. The size of the current spike suggests that the current inflation spell 24 Forsyth, Di 5 Avista Corporation could be prolonged. In turn, this could have a prolonged impact on future expenditure 1 growth as the prices of the goods and services purchased by the Company increase at a 2 faster than average rate. 3 Q. Are there other measures of inflation that are relevant to Avista? 4 A. Yes. The top graph in Figure No. 3 shows the Producer Price Index for 5 Stage 2 intermediate good inputs (excluding food and energy), Stage 2 for services inputs, 6 and Stage 2 construction inputs related to maintenance and repair. 3 The bottom graph in 7 Figure No. 3 shows annual growth for the Consumer Price Index for urban consumers (CPI-8 U); the Personal Consumption Expenditures Index (PCEI), the Federal Reserve’s preferred 9 measure of consumer inflation.4 10 3 The base index data used for Figure 3 was retrieved from the FRED data base at the Federal Reserve Bank of St. Louis. The FRED data links are: (1) U.S. Bureau of Labor Statistics, Consumer Price Index for All Urban Consumers: All Items in U.S. City Average [CPIAUCSL], retrieved from FRED, Federal Reserve Bank of St. Louis; https://fred.stlouisfed.org/series/CPIAUCSL. (2) U.S. Bureau of Economic Analysis, Personal Consumption Expenditures: Chain-type Price Index [PCEPI], retrieved from FRED, Federal Reserve Bank of St. Louis; https://fred.stlouisfed.org/series/PCEPI. (3) U.S. Bureau of Labor Statistics, Producer Price Index by Commodity: Intermediate Demand by Production Flow: Inputs to Stage 2 Goods Producers, Goods Excluding Foods and Energy [WPSID52113], retrieved from FRED, Federal Reserve Bank of St. Louis; https://fred.stlouisfed.org/series/WPSID52113. (4) U.S. Bureau of Labor Statistics, Producer Price Index by Commodity: Intermediate Demand by Production Flow: Inputs to Stage 2 Goods Producers, Services [WPSID5212], retrieved from FRED, Federal Reserve Bank of St. Louis; https://fred.stlouisfed.org/series/WPSID5212. (5) U.S. Bureau of Labor Statistics, Producer Price Index by Commodity: Intermediate Demand by Production Flow: Inputs to Stage 2 Goods Producers, Construction [WPSID5213], retrieved from FRED, Federal Reserve Bank of St. Louis; https://fred.stlouisfed.org/series/WPSID5213. That data has been seasonally adjusted by the Bureau of Labor Statistics. 4 The BLS provides an overview of the CPI at https://www.bls.gov/cpi/overview.htm. Forsyth, Di 6 Avista Corporation 4.2% 7.8% 3.6% 6.1% 0% 1% 2% 3% 4% 5% 6% 7% 8% 9% 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 Est An n u a l I n f l a t i o n Year Consumer Price Index and Personal Consumption Expenditures Index Inflation CPI-U (CPIAUCSL)PCEI (PCEPI) 24.0% 12.5% 5.4%10.3% 4.8% 11.4% -10% -5% 0% 5% 10% 15% 20% 25% 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020 2021 2022 Est An n u a l I n f l a t i o n Year PPI Stage 2 Intermediate Input Price Inflation (Includes Producers Engaged in Electric Generation, Transmission, and Destribution and Natural Gas Distribution) Stage 2 Goods Producers, Prices Paid for Input Goods Excluding Food and Energy (WPSID52113)Stage 2 Goods Producers, Prices Paid for Services Inputs (WPSID5212) Stage 2 Goods Producers, Prices Paid for Construction Inputs, Maintenance and Repair (WPSID5213) Figure No. 3: Recent Inflation Behavior from other Index Measures 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 Forsyth, Di 7 Avista Corporation The Stage 2 Producer Price Indexes are measuring input prices (excluding finished capital 1 investment) paid by Stage 2 producers.5 Companies like Avista are classified within Stage 2 2—this stage includes (among other industries) producers related to generation, 3 transmission, distribution, and natural gas distribution.6 These consumer price indices are 4 measuring prices paid by urban households. Since Avista is a business purchasing inputs, 5 and not an urban household, the Company views input inflation as the relevant measure of 6 cost pressures. Note that input price inflation in 2021 and 2022 (2022 is estimated with data 7 through November) has been higher than head-line consumer inflation measured by the 8 CPI-U or the PCEI. The difference between input and comsumer inflation is particularly 9 large for 2022. In this context the adjustment for certain Operation and Maintenace 10 expenditures requested by Ms. Andrews is considerablly lower than 2022 input inflation 11 for Stage 2 producers. 12 Q. Does Avista believe the Federal Reserve’s interest rate increases in 2023 13 will lower inflation? 14 A. Yes, but with a significant lag. The Federal Reserve’s interest rate increases 15 will put downward pressure on inflation, but with a long lag between the rate increases and 16 changes in the inflation rate. The lag between a monetary policy change and changes to 17 economic activity is called “transmission lag.” The Federal Reserve notes: 18 It can take a fairly long time for a monetary policy action to affect the 19 economy and inflation. And the lags can vary a lot, too. For example, the 20 5 See for the most recent PPI release https://www.bls.gov/news.release/ppi.toc.htm. Once there, choose the link “Technical Notes.” According the BLS, “The system includes two parallel treatments of intermediate demand. The first treatment organizes intermediate demand commodities by type. The second organizes intermediate demand commodities into production stages, with the explicit goal of developing a forward-flow model of production and price change.” The second type is discussed in this testimony. Because capital goods (including finished buildings) are considered final demand goods, they are excluded from the intermediate demand indexes. 6 The BLS producer composition at each stage can be seen in Appendix B at https://www.bls.gov/ppi/notices/2015/ppi-updates-commodity-weight-allocations-for-the-final-demand- intermediate-demand-aggregation-structure.htm#appendix-b. Forsyth, Di 8 Avista Corporation major effects on output can take anywhere from three months to two years. 1 And the effects on inflation tend to involve even longer lags, perhaps one 2 to three years, or more.7 (emphasis added) 3 4 In the context of current Federal Reserve policy towards higher interest rates (i.e., lower 5 money supply growth), GDP growth will likely slow significantly before the inflation 6 slows. This means that the inflation pressures currently being experienced by the Company 7 will not return to pre-2021 levels quickly. That is, inflation will likely show a significant 8 amount of persistence following the Federal Reserve’s move to increase interest rates by 9 slowing the growth rate in the money supply. 10 11 III. WEATHER NORMALIZATION METHODOLOGY CHANGES 12 Q. As part of Settlement approved in the Company’s last general rate case, 13 did the Parties agree to “meet and confer” on the merits of differing weather 14 normalization methodologies? 15 A. Yes. Provision 25 of the Settlement Stipulation in Case No. AVU-E-21-01 16 stated the following: 17 Weather Normalization – Avista agrees to meet and confer with Staff, 18 and interested parties, on its weather normalization methodologies, with 19 the intention to see what changes, if any, should be made to further the 20 accuracy of its modeling. 21 22 In compliance with that agreement, the Parties held a virtual meeting on May 4, 2022 to 23 discuss the merits of differing weather normalization methodologies. Based on discussion 24 and feedback from that meeting, the Company analyzed its weather normalization process 25 and is proposing, in this case, to (1) adjust the definition of “normal” weather from a 30-26 7 See https://www.frbsf.org/education/teacher-resources/us-monetary-policy-introduction/real-interest-rates- economy/ under the heading Forsyth, Di 9 Avista Corporation year rolling average to a 20-year rolling average, and (2) to adjust its non-degree day 1 seasonal regression factors from seasonal factors to monthly factors. 2 Q. Regarding the first change, can you describe why the Company is 3 proposing to move from a 30-year rolling average to a 20-year rolling average? 4 A. Yes, the Company is moving to a 20-year rolling average for two reasons. 5 First, the Company believes that the 20-year rolling average better captures the ongoing 6 trends in heating degree days (HDD) and cooling degree days (CDD) shown in Figure 4. 7 Figure No. 4: Heating and Cooling Degree Days since 1947 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 The first graph in Figure 4 shows that starting in late 1980s, HDD started to decline. In 23 contrast, in the early 2000s, CDD started to increase. This is represented by the dashed 24 Forsyth, Di 10 Avista Corporation lines in Figure No. 4 above. For the pre-trend period, 1947 to 1989, average annual HDD 1 were 6,907 compared to 6,477 for the 2002-2021 20-year period—on average, a decline of 2 over 430 HDD a year, or 6.2%. For the pre-trend period, 1947 to 1999, average annual 3 CDD were about 399 compared to 555 for the 2002-2021 twenty-year period—on average, 4 an increase of 156 CDD a year, or 34.5%. Based on these trends, the Company believes 5 using a 30-year average will allocate too many HDD and too few CDD. 6 The second reason for using a 20-year rolling average is to sync up the weather 7 adjustment definition of normal weather with other parts of the Company, including the 8 definition of normal weather used for the load forecasts for the Company’s Integrated 9 Resource Plans (IRP) and revenue models. 10 Q. Regarding the second Weather Normalization proposed change, can 11 you describe why the Company is proposing to move from non-degree day seasonal 12 regression factors to monthly factors? 13 A. Yes. The using of seasonal factors can obscure non-degree day influences 14 that are unique to each month, especially in transitional months like June and October. 15 Using monthly factors improved the models’ fit and helped to eliminate the need for error 16 corrected regressions (also known as autocorrelated error regressions) that the Company 17 used in the previous weather normalization method. 18 Q. Has the Company quantified the difference between a 30-year rolling 19 average and a 20-year rolling average? 20 A. Yes. This comparison is done in two ways. The first way was to compare 21 the new method, which uses a 20-year rolling average, with the previous method, which 22 used a 30-year rolling average. The second way was to compare the new method with a 23 20-year rolling average, to the new method using a 30-year rolling average. 24 Forsyth, Di 11 Avista Corporation Weather Normalization Method Total Electric, kWh Total Natural Gas, THM New Method, ID 20-yr Rolling Average 3,045,675,694 151,143,989 New Method ID, 30-yr Rolling Average 3,041,354,737 151,762,005 Previous Method, 30-yr Rolling Average 3,027,612,009 153,023,302 % Difference Comparison Total, % Diff Total, % Diff 20-yr New Method to 30-yr Previous Method 0.6% -1.2% 30-yr New Method to 30-yr Previous Method 0.5% -0.8% 20-yr New Method to 30-yr New Method 0.1% -0.4% Load Difference Comparison Total, kWh Diff Total, THM Diff 20-yr New Method to 30-yr Previous Method 18,063,685 (1,879,313) 30-yr New Method to 30-yr Previous Method 13,742,728 (1,261,296) 20-yr New Method to 30-yr New Method 4,320,957 (618,017) Q. Has the Company quantified the kilowatt hour (kWh) and therm 1 (THM) difference on an annual basis of making proposed weather normalization 2 methodology changes described above? 3 A. Yes. Based on a comparison of actual calendarized usage for 2021, Table 4 No. 1 shows the kWh and THM differences between the new weather normalization 5 methodology changes. 6 Table No. 1: Idaho Weather Normalization Comparison for Calendar Year 2021 7 8 9 10 11 12 13 14 15 16 17 18 19 In the Company’s view, the annual differences of 0.6% for electric (about 18 million 20 kilowatt hours) and 1.2% for natural gas (about 1.9 million therms) are not material. In 21 addition to the new method assuming less HDD and more CDD (using a 20-year rolling 22 average), observed differences between the new and the previous methods also reflect the 23 use of monthly factors in place of seasonal factors; the assumption (in some schedules) of 24 Forsyth, Di 12 Avista Corporation non-linearity between HDD and use-per-customer;8 and the addition of net unbilled usage 1 before weather normalization occurs.9 The Company believes each of these changes 2 improves and streamlines the weather normalization process and eliminates the need for 3 specialized econometric software. 10 4 Q. Is the weather normalization adjustment incorporated into the 5 proposed revenue requirement adjustments in this case? 6 A. Yes. The weather normalization adjustment is a component of the revenue 7 normalization adjustment which is sponsored by Company witness Mr. Garbarino for 8 electric operations, and Company witness Mr. Anderson for natural gas operations. Please 9 refer to their testimonies for a full description of the revenue normalization adjustment and 10 its components. 11 Q. Does this conclude your pre-filed direct testimony? 12 A. Yes. 13 8 It can be shown that for certain schedules, the relationship between monthly HDD and monthly use-per- customer is non-linear. In linear regression, this can be controlled for by adding squared or cubed values of monthly HDD. 9 Because the new method adjusts for monthly net unbilled load before the weather normalization is done, monthly billed load is calendarized before the weather normalization occurs. The previous method calendarized monthly load by adding net unbilled after the weather normalization of the billed load. The new method recognizes that net unbilled load can be influenced by weather; this means adjusting billed load for net unbilled load before weather normalization is preferable. 10 The proposed modeling approach eliminates the need for autocorrelated error regressions. This means all regressions are now done in Excel without the aid of E-views or other specialized econometrics software. The Excel based regressions have been built with diagnostic checks to validate model fit.