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首页> 外文期刊>Journal of environment informatics >Comparing A Bayesian and Fuzzy Number Approach to Uncertainty Quantification in Short-Term Dissolved Oxygen Prediction
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Comparing A Bayesian and Fuzzy Number Approach to Uncertainty Quantification in Short-Term Dissolved Oxygen Prediction

机译:短期溶解氧预测不确定性量化的贝叶斯和模糊数方法比较

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摘要

A new autoregressive-type, updating fuzzy linear regression method is proposed to predict daily dissolved oxygen (DO) concentration in a highly urbanized riverine environment. Results of this model are compared to results from an updating Bayesian regression model. Both methods use lagged daily DO (at four different lags) as the independent variable. Uncertainty in the models is represented by a fuzzy number based approach in the first case, and by a Bayesian framework in the second. Real-time data from the Bow River in Calgary, Canada is used to calibrate the models sequentially to mimic a real-time updating model. Four different performance metrics were used to measure the performance of each model. Lastly, the input data resolution is reduced to measure the impact on model performance. Results show that the physical system can be adequately characterized using only one year of data. Both approaches can capture the general trend of daily DO, but the fuzzy number based method can better capture the changes in observed variability. The metrics for both models are comparable, with the one-day lag case categorized as "very good"; however, the performance reduces at higher lags. The fuzzy number method captures more low DO events than the Bayesian approach, with a much lower mean squared error. A possibility to probability transformation is used to highlight the risk of low DO days for the fuzzy case. Lastly, reducing the input data resolution from 96 to 6 points per day has a minimal impact on model performance, suggesting the limited efficacy or utility in increasing sampling rates.
机译:提出了一种新的自回归类型,更新的模糊线性回归方法,以预测高度城市化的河流环境中的每日溶解氧(DO)浓度。将该模型的结果与更新的贝叶斯回归模型的结果进行比较。两种方法都使用每日滞后DO(四个不同的滞后时间)作为自变量。模型的不确定性在第一种情况下由基于模糊数的方法表示,在第二种情况下由贝叶斯框架表示。来自加拿大卡尔加里弓河的实时数据用于依次校准模型,以模拟实时更新模型。四个不同的性能指标用于衡量每个模型的性能。最后,降低输入数据的分辨率以衡量对模型性能的影响。结果表明,仅使用一年的数据就可以充分表征物理系统。两种方法都可以捕获每日溶解氧的总体趋势,但是基于模糊数的方法可以更好地捕获所观察到的变异性的变化。两种模型的指标是可比较的,一天的滞后情况被归类为“非常好”。但是,性能会随着滞后时间的延长而降低。与贝叶斯方法相比,模糊数方法可捕获更多的低DO事件,且均方误差要低得多。概率转换的可能性被用来强调模糊情况下低溶解氧天数的风险。最后,将输入数据分辨率从每天96点降低到每天6点,对模型性能的影响最小,这表明在提高采样率方面效果有限。

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