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FSfRT: Forecasting system for red tides

机译:FSfRT:赤潮预报系统

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摘要

A hybrid neuro-symbolic problem-solving model is presented in which the aim is to forecast parameters of a complex and dynamic environment in an unsupervised way. In situations in which the rules that determine a system are unknown, the prediction of the parameter values that determine the characteristic behaviour of the system can be a problematic task. In such a situation, it has been found that a hybrid case-based reasoning system can provide a more effective means of performing such predictions than other connectionist or symbolic techniques. The system employs a case-based reasoning model to wrap a growing cell structures network, a radial basis function network and a set of Sugeno fuzzy models to provide an accurate prediction. Each of these techniques is used at a different stage of the reasoning cycle of the case-based reasoning system to retrieve historical data, to adapt it to the present problem and to review the proposed solution. This system has been used to predict the red tides that appear in the coastal waters of the north west of the Iberian Peninsula. The results obtained from experiments, in which the system operated in a real environment, are presented.
机译:提出了一种混合的神经符号问题解决模型,其目的是在无监督的情况下预测复杂和动态环境的参数。在确定系统的规则未知的情况下,确定系统特征行为的参数值的预测可能是有问题的任务。在这种情况下,已经发现,基于混合案例的推理系统可以提供比其他连接主义者或符号技术更有效的执行此类预测的手段。该系统采用基于案例的推理模型来包装不断增长的单元结构网络,径向基函数网络和一组Sugeno模糊模型,以提供准确的预测。在基于案例的推理系统的推理周期的不同阶段中,将使用每种技术来检索历史数据,使其适应当前问题并查看所提出的解决方案。该系统已用于预测伊比利亚半岛西北部沿海水域中出现的赤潮。给出了从实验中获得的结果,其中系统在真实环境中运行。

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