首页> 外文期刊>Journal of Hydroinformatics >Application of the Random Forest model for chlorophyll-a forecasts in fresh and brackish water bodies in Japan, using multivariate long-term databases
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Application of the Random Forest model for chlorophyll-a forecasts in fresh and brackish water bodies in Japan, using multivariate long-term databases

机译:利用多变量长期数据库将随机森林模型用于日本淡水和微咸水体中叶绿素-a预报的应用

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摘要

There is a growing world need for predicting algal blooms in lakes and reservoirs to better manage water quality. We applied the random forest model with a sliding window strategy, which is one of the machine learning algorithms, to forecast chlorophyll-a concentrations in the fresh water of the Urayama Reservoir and the saline water of Lake Shinji. Both water bodies are situated in Japan and have historical water records containing more than ten years of data. The Random Forest (RF) model allowed us to forecast trends in time series of chlorophyll-a in these two water bodies. In the case of the reservoir, we used the data separately from two sampling stations. We found that the best model parameters for the number of min-leaf, and with/without pre-selection of predictors, varied at different stations in the same reservoir. We also found that the best performance of lead-time and accuracy of the prediction varied between the two stations. In the case of the lake, we found the best combination of a min-leaf and pre-selection of predictors was different from that of the reservoir case. Finally, the most influential parameters for the random forest model in the two water bodies were identified as biochemical oxygen demand (BOD), chemical oxygen demand (COD), pH, and total nitrogen/total phosphorus (TN/TP).
机译:世界上越来越需要预测湖泊和水库中的藻华,以更好地管理水质。我们将具有滑动窗口策略的随机森林模型(这是机器学习算法之一)应用于预测Urayama水库的淡水和Shinji湖的盐水中的叶绿素a浓度。这两个水体都位于日本,并且具有包含超过十年数据的历史水记录。随机森林(RF)模型使我们能够预测这两个水体中叶绿素a的时间序列趋势。对于水库,我们分别从两个采样站使用了数据。我们发现,在同一油藏中,不同站点的最小叶片数量的最佳模型参数以及是否预选预测变量都是不同的。我们还发现,交货期的最佳性能和预测的准确性在两个站点之间有所不同。以湖泊为例,我们发现最小叶片和预测因子的预选的最佳组合与水库案例的最佳组合是不同的。最后,确定了两个水体中随机森林模型的最有影响力的参数是生化需氧量(BOD),化学需氧量(COD),pH和总氮/总磷(TN / TP)。

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