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Sequential Fish Catch Forecasting Using Bayesian State Space Models

机译:使用贝叶斯状态空间模型的顺序鱼产量预测

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A new state space model suitable for fixed shore net fishing is proposed and successfully applied to daily fish catch forecasting. Accurate prediction of daily fish catches makes it possible to support fishery workers with decision-making for efficient operations. For that purpose, the predictive model should be intuitive to the fishery workers and provide an estimate with a confidence. In the present paper, a fish catch forecasting method is developed using a state space model that emulates the process of fixed shore net fishing. In this method, the parameter estimation and prediction are sequentially performed using the Hamiltonian Monte Carlo method. The experimental comparisons using actual fish catch data and public meteorological information demonstrated that the proposed forecasting system yielded significant reductions in predictive errors over the systems based on decision-trees and legacy state-space models.
机译:提出了一种适用于固定岸网捕鱼的新状态空间模型,并将其成功地应用于日常鱼产量的预测。对每日捕捞量的准确预测可以通过有效的决策支持渔业工人。为此,预测模型对于渔业工人应该是直观的,并且可以放心地提供估计值。在本文中,使用模拟固定岸网捕鱼过程的状态空间模型,开发了一种捕鱼量预测方法。在这种方法中,使用汉密尔顿蒙特卡罗方法顺序执行参数估计和预测。使用实际渔获量数据和公共气象信息进行的实验比较表明,与基于决策树和传统状态空间模型的系统相比,拟议的预测系统大大降低了系统的预测误差。

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