Data Information integrated Neural Network (DINN) algorithm for modelling and interpretation performance analysis for energy systems

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Energy and AI Pub Date : 2024-03-25 DOI:10.1016/j.egyai.2024.100363
Waqar Muhammad Ashraf, Vivek Dua
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Abstract

Developing a well-predictive machine learning model that also offers improved interpretability is a key challenge to widen the application of artificial intelligence in various application domains. In this work, we present a Data Information integrated Neural Network (DINN) algorithm that incorporates the correlation information present in the dataset for the model development. The predictive performance of DINN is also compared with a standard artificial neural network (ANN) model. The DINN algorithm is applied on two case studies of energy systems namely energy efficiency cooling (ENC) & energy efficiency heating (ENH) of the buildings, and power generation from a 365 MW capacity industrial gas turbine. For ENC, DINN presents lower mean RMSE for testing datasets (RMSE_test = 1.23 %) in comparison with the ANN model (RMSE_test = 1.41 %). Similarly, DINN models have presented better predictive performance to model the output variables of the two case studies. The input perturbation analysis following the Gaussian distribution for noise generation reveals the order of significance of the variables, as made by DINN, can be better explained by the domain knowledge of the power generation operation of the gas turbine. This research work demonstrates the potential advantage to integrate the information present in the data for the well-predictive model development complemented with improved interpretation performance thereby opening avenues for industry-wide inclusion and other potential applications of machine learning.

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用于能源系统建模和性能分析解释的数据信息集成神经网络 (DINN) 算法
要在各个应用领域拓宽人工智能的应用范围,开发一个具有良好预测能力的机器学习模型并提高其可解释性是一项关键挑战。在这项工作中,我们提出了一种数据信息集成神经网络(DINN)算法,该算法结合了数据集中的相关信息来开发模型。我们还将 DINN 的预测性能与标准人工神经网络(ANN)模型进行了比较。DINN 算法应用于两个能源系统案例研究,即建筑物的节能制冷(ENC)和节能供热(ENH),以及 365 兆瓦容量的工业燃气轮机发电。就 ENC 而言,与 ANN 模型(RMSE_test = 1.41 %)相比,DINN 模型的测试数据集平均 RMSE 更低(RMSE_test = 1.23 %)。同样,DINN 模型对两个案例研究的输出变量建模的预测性能更好。根据高斯分布进行的输入扰动噪声分析表明,DINN 所做的变量重要性排序可以更好地用燃气轮机发电运行的领域知识来解释。这项研究工作展示了整合数据信息的潜在优势,以开发预测性更强的模型,并提高解释性能,从而为整个行业和机器学习的其他潜在应用开辟道路。
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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
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