January 9, 2026
Report

VRN3P: Variational Recurrent Neural Network Based Net-Load Prediction under High Solar Penetration

Abstract

This is the final technical report for the SETO-funded VRN3P project (PNNL# 76914). The goal of this project, led by Pacific Northwest National Laboratory (PNNL), in collaboration with Lawrence Livermore National Laboratory (LLNL) and Portland General Electric (PGE), was to develop and validate a deep variational recurrent neural network-based net-load prediction (VRN3P) framework for probabilistic time-series forecasting of day-ahead net-load under high solar penetration scenarios. The project team reports successful design of a novel probabilistic net-load forecasting architecture, comprising of a variational autoencoder and a recurrent neural network, which demonstrates 30% improvement in forecast performance, 60% improvement in training time, and consumes 44% less memory, when compared with conventional baseline models. The team tested the VRN3P model performance on GridLAB-D test-cases representing varying BTM solar penetration levels of 20%, 30%, and 50%, with integrated time-series net-load profiles provided by the utility partner (PGE). The VRN3P model demonstrate

Published: January 9, 2026

Citation

Kundu S., A.M. Campbell, K. Bhattacharjee, O. Vasios, A.P. Reiman, and I. Chakraborty. 2026. VRN3P: Variational Recurrent Neural Network Based Net-Load Prediction under High Solar Penetration Richland, WA: Pacific Northwest National Laboratory.

Research topics