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A Swarm-Optimized Fuzzy Instance-based Learning approach for predicting slope collapses in mountain roads

机译:基于群优化的模糊实例学习方法预测山路边坡坍塌

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摘要

Due to the disastrous consequences of slope failures, forecasting their occurrences is a practical need of government agencies to develop strategic disaster prevention programs. This research proposes a Swarm-Optimized Fuzzy Instance-based Learning (SOFIL) model for predicting slope collapses. The proposed model utilizes the Fuzzy k-Nearest Neighbor (FKNN) algorithm as an instance-based learning method to predict slope collapse events. Meanwhile, to determine the model's hyper-parameters appropriately, the Firefly Algorithm (FA) is employed as an optimization technique. Experimental results have pointed out that the newly established SOFIL can outperform other benchmarking algorithms. Therefore, the proposed model is very promising to help decision-makers in coping with the slope collapse prediction problem.
机译:由于边坡破坏的灾难性后果,预测它们的发生是政府机构制定战略防灾计划的实际需要。这项研究提出了一种基于群体优化的基于模糊实例的学习(SOFIL)模型来预测边坡坍塌。所提出的模型利用模糊k最近邻算法(FKNN)作为基于实例的学习方法来预测边坡坍塌事件。同时,为了适当地确定模型的超参数,将Firefly算法(FA)用作优化技术。实验结果表明,新建立的SOFIL可以胜过其他基准测试算法。因此,提出的模型非常有希望帮助决策者应对边坡坍塌预测问题。

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