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首页> 外文期刊>Journal of the Chinese Institute of Engineers >Optimizing the performance of MLP and SVR predictors based on logical oring and experimental ranking equation
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Optimizing the performance of MLP and SVR predictors based on logical oring and experimental ranking equation

机译:基于逻辑调和实验排序方程,优化MLP和SVR预测器的性能

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摘要

Improving conventional prediction systems is widely used to optimize the learning process, achieve higher performance, and avoid overfitting. This paper's purpose is to propose a new predictor for solar tracking systems applications based on oring operator and ranking equation with a conventional predictor including Multi-Layer Perceptron (MLP) and Support Vector Machine Regression (SVR). The point of using oring and ranking equation is to create a new variable that stores the information of combined attributes. This process aims to increase the accuracy of predictors and increase the efficiency of intelligent solar tracking systems. The experiments used 6 different datasets for solar tracking systems. The results revealed that the proposed predictors performed better than conventional predictors. Using the proposed predictors has improved both Root Mean Square Error (RMSE) and Coefficient of Determination (R-2). The developed MLP models showed lower RMSE and higher R-2 compared to conventional MLP models. The improvement ranges for using MLP are from 1.0013 to 1.4614 degrees for RMSE, and from 1.0019 to 1.4984 times for R-2, while the improvement ranges using SVM are from 1.001 to 1.988 degrees for RMSE and from 1.000 to 2.385 times for R-2.
机译:改进传统预测系统被广泛用于优化学习过程、实现更高的性能和避免过度拟合。本文的目的是提出一种新的用于太阳跟踪系统的预测器,该预测器基于oring算子和排序方程,传统的预测器包括多层感知器(MLP)和支持向量机回归(SVR)。使用oring和排名方程的目的是创建一个新的变量来存储组合属性的信息。这一过程旨在提高预测器的准确性,提高智能太阳跟踪系统的效率。实验使用了6种不同的太阳跟踪系统数据集。结果表明,提出的预测因子比传统的预测因子表现更好。使用所提出的预测器改善了均方根误差(RMSE)和确定系数(R-2)。与传统的MLP模型相比,开发的MLP模型显示较低的RMSE和较高的R-2。对于RMSE,使用MLP的改善范围为1.0013到1.4614度,对于R-2,为1.0019到1.4984倍,而对于RMSE,使用SVM的改善范围为1.001到1.988度,对于R-2,为1.000到2.385倍。

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