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Clean Energy States Alliance Webinar The Impact of Policies and Business Models on Income Equity in Rooftop Solar Adoption December 3, 2020 Webinar Logistics Join audio: Choose Mic & Speakers to use VoIP Choose Telephone and


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The Impact of Policies and Business Models on Income Equity in Rooftop Solar Adoption

December 3, 2020

Clean Energy States Alliance Webinar

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Webinar Logistics

Join audio:

  • Choose Mic & Speakers to use VoIP
  • Choose Telephone and dial using the

information provided Use the orange arrow to open and close your control panel Submit questions and comments via the Questions panel This webinar is being recorded. We will email you a webinar recording within 48

  • hours. This webinar will be posted on

CESA’s website at www.cesa.org/webinars

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www.cesa.org

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Webinar Speakers

Nate Hausman

Project Director, Clean Energy States Alliance (moderator)

Galen Barbose

Research Scientist, Electricity Markets and Policy Department, Lawrence Berkeley National Laboratory

Eric O’Shaughnessy

Renewable Energy Research Consultant, Clean Kilowatts LLC

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ENERGY TECHNOLOGIES AREA ENERGY ANALYSIS AND ENVIRONMENTAL IMPACTS DIVISION

The Impacts of Policies and Business Models

  • n Income Equity in Rooftop Solar Adoption

Eric O’Shaughnessy1,2, Galen Barbose1, Ryan Wiser1, Sydney Forrester1, Naïm Darghouth1

CESA Webinar, December 2020

1 Lawrence Berkeley National Laboratory 2 Clean Kilowatts, LLC

Presentation based on paper published in Nature Energy of the same title See: https://emp.lbl.gov/publications/impact-policies-and-business-models.

This work was funded by the U.S. Department of Energy Solar Energy Technologies Office, under Contract No. DE-AC02-05CH11231.

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Summary

 Low- and moderate-income

(LMI) households are less likely to adopt solar photovoltaics (PV) than higher- income households.

 PV adoption inequity may

perpetuate energy justice issues and decelerate PV deployment.

 We explore the impacts of five

policy and business model interventions on PV adoption equity. Three of the five interventions are associated with more equitable PV adoption: LMI- targeted incentives, leasing, and property- assessed financing The interventions increase adoption equity in existing markets (deepening the market) and push PV deployment into under-served low- income communities (broadening the market).

Key findings:

Photo by Dennis Schroeder, NREL 45243

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LBL Solar Demographics Tracking

 This presentation is part of a

broader Lawrence Berkeley National Laboratory effort to collect and analyze rooftop solar adopter demographic data.

 Additional resources, including an

interactive tool and data, are available at: https://emp.lbl.gov/projects/solar- demographics-trends-and-analysis

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Solar Adopter Income Trends

 High-income households have

adopted rooftop PV at higher rates than LMI households.

 LMI adoption has steadily increased

  • ver time, increasing solar adoption

equity.1

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Figure: Share of PV adopters earning less than county median income. Based on data from the LBL Solar Demographics Tool.

1 Barbose et al. (2020)

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Solar PV Adoption Inequity

 High-income households remain

about 4 times more likely to adopt PV than low-income households.

 PV adoption inequity is

reinforced by deployment patterns that funnel systems into relatively affluent areas.

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Figure: Share of PV adopters in zip codes above and below weighted median income. The line of equity illustrates where shares would fall if PV were distributed equitably.

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The Problem

 Energy justice: PV adoption inequity could perpetuate energy justice

issues.1,2

 Energy burden: PV could reduce LMI energy burdens—the

disproportionately large shares of LMI household budgets dedicated to energy expenses. PV adoption inequity limits LMI access to these benefits.

 Cross-subsidization: Under typical residential electricity rate structures,

PV adoption by non-LMI households may increase LMI energy bills.1

 Decelerated deployment: PV adoption inequity could decelerate PV

  • deployment. About 42% of PV-viable rooftop space is on LMI buildings.3

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1 Brown et al. (2020); 2 Carley & Konisky (2020); 3 Sigrin & Mooney (2018)

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Potential Solutions

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 LMI households face several barriers to PV adoption, including cash

constraints, lower home ownership rates, and language barriers.

 Certain policy and business model interventions may address these barriers

and increase PV adoption equity.

 Here, we explore the impacts of five policy and business model

interventions on PV adoption equity:

Incentives

Financial incentives available to all adopters

LMI Incentives

Incentives restricted to income-eligible adopters

Leasing

Business model allowing customers to lease rather than buy PV system*

PACE

Property-assessed clean energy financing

Solarize

Bulk PV purchasing campaign

* For the purposes of our study, we use the term “leasing” to refer to all third-party owned PV products, including power

purchase agreements.

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Research Questions

Which interventions are associated with higher PV adoption equity? Do these effects stem from increasing LMI PV adoption in existing markets (“deepening” markets) or by driving PV deployment into under- served LMI communities (“broadening” markets)?

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Data

 Our study leverages Lawrence Berkeley Lab’s

Tracking the Sun (TTS) data set. Most of the TTS data are publicly available, see: https://emp.lbl.gov/tracking-the-sun.

 We combine the TTS data with modeled

household-level income estimates from Experian.

 The final data set comprises 1,007,459 records on

PV systems installed from 2010 to 2018 on single- family homes in 18 states.

 We use U.S. Census data to generate

demographic variables for the general population.

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Metrics

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LMI Household Household earning less than their county’s median income Low-Income Community Zip code in the bottom quartile of median household incomes relative to

  • ther zip codes in the same state

Adopter Income Bias Difference between adopter’s modeled income and their county’s median income. LMI PV Adoption Rate Number of LMI households that adopted PV in a given zip code in a given quarter per 1,000 owner-occupied LMI households

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Methods

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Analysis of Income Bias We assess relationships between the interventions and adopter income bias through a fixed-effects regression. Effects on LMI PV Adoption Rates We test changes in LMI PV adoption rates before and after interventions were implemented. See paper for methodological details

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Analysis of Income Bias

 Three of the five interventions are

associated with lower adopter income bias:

 LMI incentives  Leasing  PACE

 These effects are robust to

numerous alternative model specifications

 Incentives and Solarize were not

associated with less income bias

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Table: Regression Results – Analysis of Adopter Income Bias

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LMI Adopters Use the Interventions at Higher Rates

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Figure: Share of adopters using interventions by household income as percentage of county median income

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Effects on LMI PV Adoption Rates

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Figure: LMI adoption rates by quarter in groups of zip codes that first used interventions in the same quarters (see paper for further clarity)

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Effects on LMI PV Adoption Rates

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Figure: Average group-time effects by intervention. Positive group-time effects represent higher LMI adoption rates. LMI incentives and leasing are associated with significant initial and lagged increases in PV adoption rates (see paper for further clarity).

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Deployment Shifting

The data suggest that the interventions are used disproportionately in LMI communities, providing evidence that the interventions shift deployment into previously under-served communities.

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4.7%

  • f adopters in

low-income communities receive

LMI Incentives

compared to

0.7%

in other areas

48.6%

  • f adopters in

low-income communities use

leasing

compared to

41.5%

in other areas

3.4%

  • f adopters in

low-income communities receive

PACE

compared to

3%

in other areas

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Deployment Shifting

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Figure: Predicted and actual LMI deployment levels in high- and low-income zip codes by

  • intervention. In each case, LMI adoption rates of intervention-supported systems exceed

projections in low-income zips, consistent with deployment shifting (see paper for further clarity)

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Discussion: The Implications of Deployment Shifting

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Traditional PV deployment patterns funnel PV systems into high-income neighborhoods Interventions could create a “seed” adopter in an LMI neighborhood By driving systems into LMI neighborhoods, interventions could catalyze spillover impacts from forces such as peer effects

  • r by attracting more installers

into LMI areas

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Conclusions

Three of the five interventions are associated with more equitable PV adoption: LMI-targeted incentives, leasing, and property-assessed financing The interventions increase adoption equity in existing markets (deepening the market) and also push PV deployment into under- served low-income communities (broadening the market).

Photo by Dennis Schroeder, NREL 45243

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Further Research

  • Future research can explore how effectively more equitable PV

adoption could address energy justice issues (e.g., energy burden) relative to other potential pathways.

  • Future research can explore the potential spillover impacts associated

with deployment shifting.

  • Future research can explore other potential interventions, including

interventions not designed specifically for rooftop PV, such as community solar.

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ENERGY TECHNOLOGIES AREA ENERGY ANALYSIS AND ENVIRONMENTAL IMPACTS DIVISION

Contacts

Eric O'Shaughnessy: EOShaughnessy@lbl.gov, (720) 381-4889 Galen Barbose: GLBarbose@lbl.gov Ryan Wiser: RHWiser@lbl.gov Sydney Forrester: SPForrester@lbl.gov Naïm Darghouth: NDarghouth@lbl.gov

For more information

Download publications from the Electricity Markets & Policy Group: https://emp.lbl.gov/publications Sign up for our email list: https://emp.lbl.gov/mailing-list Follow the Electricity Markets & Policy Group on Twitter: @BerkeleyLabEMP

Acknowledgements

This work was funded by the U.S. Department of Energy Solar Energy Technologies Office, under Contract No. DE-AC02-05CH11231.

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References

Barbose et al. 2020. Income Trends among U.S. Residential Rooftop Solar Adopters. Berkeley, CA: LBNL. Brown, M. et al. 2020. Low-Income Energy Affordability: Conclusions from a Literature Review. Oak Ridge National Laboratory. Carley, S., D.M. Konisky. 2020. “The justice and equity implications of the clean energy transition.” Nature Energy 5:569-577. O’Shaughnessy et al. 2020. “The impact of policies and business models on income equity in rooftop solar adoption.” Nature Energy. Sigrin, B., M. Mooney. 2018. Rooftop Solar Technical Potential for Low-to-Moderate Income Households in the United States. Golden, CO: NREL.

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Thank you for attending our webinar

Nate Hausman Project Director, CESA nate@cleanegroup.org Visit www.cesa.org for more information and resources

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Upcoming Webinars

Read more and register at: www.cesa.org/webinars

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