核心概念
A proximal policy optimization (PPO) based framework that effectively manages residential solar energy to maximize profits in a dynamic electricity market.
摘要
The content presents a framework for intelligent home solar energy management using proximal policy optimization (PPO). The key highlights are:
- The authors propose a PPO-based approach to automate and improve the energy management of residential solar power, designed to handle limited data.
- They introduce a method for structuring rewards and sparse rewards that allows PPO to improve its performance in long-term contexts.
- The authors develop a data augmentation technique and a soliton-based embedding that outperformed normal embeddings for their use case with limited data, using a sparse mixture of experts (MOE) model.
The framework aims to maximize the total accumulated profits from selling energy back to the grid, without considering power usage by household appliances. The authors compare the performance of their PPO agent against a sell-only algorithm, random choices, and an MOE time series forecasting algorithm. The results show that the PPO agent can achieve over 30% improvement in total profits compared to the other approaches.
統計資料
The wattage is calculated as follows:
Watt = vmp * imp