Department of Water Engineering, Faculty of Agriculture, Bu-Ali Sina University, Hamedan, Iran.
Department of Water Engineering, Faculty of Agricultural Engineering, Sari Agricultural Sciences and Natural Resources University, Sari, Iran.
Environ Sci Pollut Res Int. 2024 Mar;31(15):22900-22916. doi: 10.1007/s11356-024-32620-7. Epub 2024 Feb 28.
Lakes, as the main sources of surface water, are of great environmental and ecological importance and largely affect the climatic conditions of the surrounding areas. Lake area fluctuations are very effective on plant and animal biodiversity in the areas covered. Hence, accurate and reliable forecasts of lake area might provide the awareness of water and climate resources and the survival of various species dependent on area fluctuations. Using machine learning methods, the current study numerically predicted area fluctuations of China's largest lake, Qinghai, over 1 to 12 months ahead of lead time. To this end, Moderate Resolution Imaging Spectroradiometer (MODIS) sensor images were used to monitor the monthly changes in the area of the lake from 2000 to 2021. Predictive inputs included the MODIS-derived lake area time latency specified by the autocorrelation function. The data was divided into two periods of the train (initial 75%) and test (final 25%), and the input combinations were arranged so that the model in the test period could be used to predict 12 scenarios, including forecast horizons for the next 1 to 12 months. The adaptive neuro-fuzzy inference system (ANFIS) was utilized as a predictive model. The firefly algorithm (FA) was also used to optimize ANFIS and improve its accuracy, as a hybrid model ANFIS-FA. Based on evaluation criteria such as root mean square error (RMSE) (477-594 km) and R (88-92%), the results confirmed the acceptable accuracy of the models in all forecast horizons, even long-term horizons (10 months, 11 months, and 12 months). Based on the normalized RMSE criterion (0.095-0.125), the models' performance was reported to be appropriate. Furthermore, the firefly algorithm improved the prediction accuracy of the ANFIS model by an average of 16.9%. In the inter-month survey, the models had fewer forecast errors in the dry months (February-March) than in the wet months (October-November). Using the current method can provide remarkable information about the future state of lakes, which is very important for managers and planners of water resources, environment, and natural ecosystems. According to the results, the current approach is satisfactory in predicting MODIS-derived fluctuations of Qinghai Lake area and has research value for other lakes.
湖泊作为地表水的主要来源,具有重要的环境和生态意义,对周围地区的气候条件有很大影响。湖泊面积的波动对覆盖区域的动植物生物多样性有很大影响。因此,对湖泊面积进行准确可靠的预测,可以使人们了解水资源和气候资源的情况,以及依赖于面积波动而生存的各种物种的情况。本研究使用机器学习方法,对中国最大的湖泊——青海湖的面积进行了 1 至 12 个月提前期的数值预测。为此,使用中分辨率成像光谱仪(MODIS)传感器图像监测了 2000 年至 2021 年期间湖泊面积的逐月变化。预测输入包括自相关函数指定的 MODIS 衍生的湖泊面积时间滞后。数据分为训练期(初始 75%)和测试期(最后 25%)两个阶段,输入组合排列方式使测试期内的模型可以用于预测 12 种情况,包括未来 1 至 12 个月的预测期。自适应神经模糊推理系统(ANFIS)被用作预测模型。萤火虫算法(FA)也被用于优化 ANFIS 并提高其准确性,形成混合模型 ANFIS-FA。基于均方根误差(RMSE)(477-594 公里)和 R(88-92%)等评估标准,结果证实了所有预测期内模型的可接受精度,即使是长期预测(10 个月、11 个月和 12 个月)。根据归一化 RMSE 标准(0.095-0.125),模型的性能被认为是合适的。此外,萤火虫算法平均提高了 ANFIS 模型的预测精度 16.9%。在跨月调查中,模型在旱月(2 月至 3 月)的预测误差小于湿月(10 月至 11 月)。使用当前方法可以提供关于湖泊未来状态的重要信息,这对于水资源、环境和自然生态系统的管理者和规划者非常重要。根据结果,当前方法在预测 MODIS 衍生的青海湖面积波动方面表现令人满意,对其他湖泊具有研究价值。