基于极值学习机算法的泰米尔纳德邦水资源磷酸盐水平优化检测分析创新方法及基于准确率和均方错误率的SVM比较

B. Kiran, V. Parthipan
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引用次数: 0

摘要

目的:本研究的目的是预测函数结构,利用基于精度和均方错误率(MSE)的极限学习机算法(ELM)优于支持向量机算法(SVM)来改进水资源中磷酸盐的创新最优检测和分析。方法和材料:在本方法中取了两种算法,每种算法的数据样本大小为$N=5$,对两种算法进行测试和比较会显示出更高的准确性。G功率80%阈值为0.05%,CI为95%。结果与讨论:经数据计量、统计分析和独立样本t检验,显著性水平为($P < 0.03$),与SVM(88%)相比,ELM算法的准确率更高,均方错误率(92%)更低。结论:该方法具有较好的准确度、选择性和可与支持向量机相媲美的极值学习机,可用于自然水体中硝酸盐的测定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Innovative Method for Optimal Detection and Analysis of Phosphate Level in Tamilnadu Water Resources using Extreme Learning Machine Algorithm and Comparing with SVM based on Accuracy and Mean Squared Error Rate
Aim: The Aim of the works involves the predict the structure of function to Improve Innovative Optimal Detection and analysis of phosphate in water resources using an Extreme Learning Machine algorithm (ELM) over Support Vector Machine algorithm (SVM) founded on accuracy and Mean Squared Error rate (MSE). Methods and materials: In this method have taken two algorithms with data samples of each size is $N=5$ and testing and comparing with two algorithms will show greater accuracy. G power 80 % threshold 0.05 %, CI is 95 %. Results and Discussion: Based on the measurement of data, statistical analysis, and independent sample T-test, the significant level is ($P < 0.03$) to produce better accuracy, lower mean squared error rate using ELM algorithm (92%) while comparing to SVM (88%). Conclusion: The method shows reasonable accuracy, selectivity, and comparable extreme learning machine than support vector machine which allows it for nitrate determination in natural water.
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