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SVM kernel based on particle swarm optimized vector and Bayesian optimized SVM in atmospheric particulate matter forecasting

机译:基于粒子群优化的载体和贝叶斯优化SVM的SVM内核在大气颗粒物质预测中

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The application of Artificial Intelligence (AI) has been upgraded in many scientific fields the last years, with the development of new artificial intelligence-based technologies and techniques. Considering that in the literature there is a very limited number of studies proposing and testing new SVM kernels in regression problems, this research introduces a novel SVM Kernel by incorporating a transformed particle swarm optimized ANN weight vector in a Bayesian optimized SVM kernel in a time series problem for predicting the atmospheric pollutant factor Particulate Matter 10 (PM10). The proposed model introduces a new SVM kernel that illustrates an increased forecasting accuracy compared to the conventional optimized ANN and SVM models according to the experimental results. The findings of the proposed methodology illustrate that the new proposed SVM Kernel can be utilized as an improved forecasting technique. (c) 2020 Elsevier B.V. All rights reserved.
机译:人工智能(AI)在过去几年中的应用已经在许多科学领域升级,随着基于新的人工智能技术和技术的发展。 考虑到在文献中,在回归问题中提出和测试新的SVM内核的研究数量非常有限,本研究通过在时间序列中纳入了贝叶斯人优化的SVM内核中的转化粒子群优化的ANN重量载体来介绍一种新的SVM内核 预测大气污染物因子颗粒物10(PM10)的问题。 所提出的模型引入了一种新的SVM内核,其说明了与根据实验结果的传统优化的ANN和SVM模型相比增加的预测精度。 所提出的方法的发现说明了新的所提出的SVM内核可以用作改进的预测技术。 (c)2020 Elsevier B.V.保留所有权利。

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