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Modelling fish habitat preference with a genetic algorithm-optimized Takagi-Sugeno model based on pairwise comparisons

机译:基于成对比较的遗传算法优化的Takagi-sugeno模型对鱼类栖息地偏好进行建模

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摘要

Species-environment relationships are used for evaluating the current status of target species and the potential impact of natural or anthropogenic changes of their habitat. Recent researches reported that the results are strongly affected by the quality of a data set used. The present study attempted to apply pairwise comparisons to modelling fish habitat preference with Takagi-Sugeno-type fuzzy habitat preference models (FHPMs) optimized by a genetic algorithm (GA). The model was compared with the result obtained from the FHPM optimized based on mean squared error (MSE). Three independent data sets were used for training and testing of these models. The FHPMs based on pairwise comparison produced variable habitat preference curves from 20 different initial conditions in the GA. This could be partially ascribed to the optimization process and the regulations assigned. This case study demonstrates applicability and limitations of pairwise comparison-based optimization in an FHPM. Future research should focus on a more flexible learning process to make a good use of the advantages of pairwise comparisons.
机译:物种与环境的关系用于评估目标物种的当前状态以及其栖息地自然或人为变化的潜在影响。最近的研究报告说,结果受到所使用数据集质量的强烈影响。本研究尝试将成对比较用于通过遗传算法(GA)优化的Takagi-Sugeno型模糊生境偏好模型(FHPM)对鱼类生境偏好建模。将模型与从基于均方误差(MSE)优化的FHPM获得的结果进行比较。使用三个独立的数据集来训练和测试这些模型。基于成对比较的FHPM从GA中的20种不同初始条件生成了可变的栖息地偏好曲线。这可以部分归因于优化过程和分配的法规。此案例研究证明了FHPM中基于成对比较的优化的适用性和局限性。未来的研究应集中在更灵活的学习过程上,以充分利用成对比较的优势。

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