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Predicting jet-grout column diameter to mitigate the environmental impact using an artificial intelligence algorithm

机译:预测喷射灌浆柱直径,使用人工智能算法减轻环境影响

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This paper describes an approach for predicting the diameter of a jet-grout column using the support vector regression (SVR) technique, which is regarded as a novel learning machine based upon recent advances in statistical theory, in which the combined effects of the construction (construction methods and jetting parameters) and soil properties (soil type and shearing resistance) are considered. Four different kernel functions, namely, a linear kernel function, polynomial kernel function, radial basis kernel function, and sigmoid kernel function, are integrated into the SVR technique. A large amount of field measured data on the diameter of jet-grout column are retrieved from the published literature for training and testing purposes. The results indicate that the SVR technique with a radial basis kernel function provides predictions closest to the measured results, whereas the prepared design charts enable the ability to significantly widen the application of the proposed approach to the areas of ground improvement and environmental protection.
机译:本文描述了一种用于使用支持向量回归(SVR)技术预测喷射灌浆柱的直径的方法,该方法被认为是基于统计理论的最近进步的新型学习机,其中构建的综合影响(考虑施工方法和喷射参数)和土壤性质(土壤型和剪切抗性)。四种不同的内核功能,即线性内核函数,多项式内核功能,径向基核功能和SIGMOID内核功能集成在SVR技术中。从发布的文献中检索了关于喷射灌浆柱直径的大量场测量数据,用于训练和测试目的。结果表明,具有径向基础内核函数的SVR技术提供最接近测量结果的预测,而准备好的设计图表能够显着扩大所提出的方法对地面改善和环境保护领域的应用。

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