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An Interpretable Solar Photovoltaic Power Generation Forecasting Approach Using An Explainable Artificial Intelligence Tool

机译:一种可解释的人工智能工具的可解释的太阳能光伏发电预测方法

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The spread of artificial intelligence (AI) over diverse industries provides many benefits as well as challenges. The inner working of an AI system still behaves like a black-box, and its adoption depends on converting it to a more glass-box structure. Recent developments in solar photovoltaic (PV) power generation forecasting indicate that AI has great potential for predicting solar power output. Interpretation of a PV power generation forecasting will enhance the efficiency and the adoption of PV energy further. This paper presents the use case of PV energy forecasting utilizing an explainable AI (XAI) tool on a high-resolution dataset. The forecasting of power generation is done using the XGBoost algorithm, and feature contributions are explained with the ELI5 XAI tool. XGBoost and ELI5 together provide simple, fast, and efficient forecasting to facilitate straightforward deployment. The proposed models are trained and tested using all features, as well as a subset of features. The results of these two models are evaluated in terms of root mean squared error (RMSE) scores.
机译:人工智能(AI)对各种产业的传播提供了许多好处以及挑战。 AI系统的内部工作仍然表现得像一个黑匣子,它的采用取决于将其转换为更具玻璃盒结构。太阳能光伏(PV)发电预测的最新发展表明AI具有预测太阳能输出的巨大潜力。对光伏发电预测的解释将进一步增强效率和采用光伏能量。本文介绍了在高分辨率数据集中利用可解释的AI(XAI)工具的PV能量预测的用例。使用XGBoost算法进行发电的预测,并用ELI5 XAI工具解释了功能贡献。 XGBoost和Eli5一起提供简单,快速,有效的预测,以促进直接部署。拟议的模型培训并使用所有功能以及特征子集进行测试。这两个模型的结果是根据根均匀误差(RMSE)分数的评估。

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