Machine Learning for Solar Accessibility: Implications for Low-Income Solar Expansion and Profitability

25 Pages Posted: 23 Sep 2019 Last revised: 13 Jul 2023

See all articles by Sruthi Davuluri

Sruthi Davuluri

Massachusetts Institute of Technology (MIT) - Center for Energy and Environmental Policy Research (CEEPR)

René García Francheschini

Massachusetts Institute of Technology (MIT)

Christopher R. Knittel

Massachusetts Institute of Technology (MIT) - Center for Energy and Environmental Policy Research (CEEPR); National Bureau of Economic Research (NBER)

Chikara Onda

Stanford University

Kelly Roache

Energy and Policy Institute (EPI)

Date Written: September 2019

Abstract

The solar industry in the US typically uses a credit score such as the FICO score as an indicator of consumer utility payment performance and credit worthiness to approve customers for new solar installations. Using data on over 800,000 utility payment performance and over 5,000 demographic variables, we compare machine learning and econometric models to predict the probability of default to credit-score cutoffs. We compare these models across a variety of measures, including how they affect consumers of different socio-economic backgrounds and profitability. We find that a traditional regression analysis using a small number of variables specific to utility repayment performance greatly increases accuracy and LMI inclusivity relative to FICO score, and that using machine learning techniques further enhances model performance. Relative to FICO, the machine learning model increases the number of low-to-moderate income consumers approved for community solar by 1.1% to 4.2% depending on the stringency used for evaluating potential customers, while decreasing the default rate by 1.4 to 1.9 percentage points. Using electricity utility repayment as a proxy for solar installation repayment, shifting from a FICO score cutoff to the machine learning model increases profits by 34% to 1882% depending on the stringency used for evaluating potential customers.

Suggested Citation

Davuluri, Sruthi and García Francheschini, René and Knittel, Christopher R. and Onda, Chikara and Roache, Kelly, Machine Learning for Solar Accessibility: Implications for Low-Income Solar Expansion and Profitability (September 2019). NBER Working Paper No. w26178, Available at SSRN: https://ssrn.com/abstract=3458212

Sruthi Davuluri (Contact Author)

Massachusetts Institute of Technology (MIT) - Center for Energy and Environmental Policy Research (CEEPR) ( email )

One Amherst Street, E40-279
Cambridge, MA 02142
United States

René García Francheschini

Massachusetts Institute of Technology (MIT) ( email )

77 Massachusetts Avenue
50 Memorial Drive
Cambridge, MA 02139-4307
United States

Christopher R. Knittel

Massachusetts Institute of Technology (MIT) - Center for Energy and Environmental Policy Research (CEEPR) ( email )

One Amherst Street, E40-279
Cambridge, MA 02142
United States

National Bureau of Economic Research (NBER)

1050 Massachusetts Avenue
Cambridge, MA 02138
United States

Chikara Onda

Stanford University

Kelly Roache

Energy and Policy Institute (EPI) ( email )

United States

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