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基于长短时记忆网络(LSTM)的蟹塘溶解氧估算优化方法 被引量:8
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作者 朱南阳 吴昊 +3 位作者 尹达恒 王志强 蒋永年 郭亚 《智慧农业》 2019年第3期67-76,共10页
水中溶解氧含量低会影响螃蟹的成活率,保证低溶解氧时刻溶解氧的预测精度非常重要。目前,溶解氧传感器价格昂贵且易遭受腐蚀,因此通过相关变量来间接估计溶解氧浓度有重要的意义。本研究在长短时记忆网络(LSTM)模型的基础上,优化LSTM反... 水中溶解氧含量低会影响螃蟹的成活率,保证低溶解氧时刻溶解氧的预测精度非常重要。目前,溶解氧传感器价格昂贵且易遭受腐蚀,因此通过相关变量来间接估计溶解氧浓度有重要的意义。本研究在长短时记忆网络(LSTM)模型的基础上,优化LSTM反向传播时的损失函数,提出了提高低溶解氧含量估算精度的溶解氧预测模型(LDO-LSTM)。LDO-LSTM的损失函数是在平均绝对百分比误差(MAPE)基础上,根据溶解氧值的变化趋势和溶解氧浓度大小,分别赋予不同权值的权重函数,并通过均方根误差(RMSE)和平均绝对百分比误差(MAPE)来评估LDO-LSTM和LSTM在不同范围的溶解氧估算能力。对模型的测试试验结果表明:在溶解氧高于6mg/L时,LDO-LSTM和LSTM的RMSE、MAPE差值稳定在0.1左右;在溶解氧低于6mg/L时,LDO-LSTM的RMSE值和MAPE值分别比LSTM低0.25和0.139,说明了LDO-LSTM网络不但可以保证整体溶氧预测精度,而且能够提高较低溶解氧值的估算精度。本研究对于降低水产养殖成本、提高溶解氧估算精度有着重要的作用。 展开更多
关键词 溶解氧 长短时记忆网络 损失函数 平均绝对百分比误差
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Deep learning for smart agriculture:Concepts,tools,applications,and opportunities 被引量:10
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作者 Nanyang Zhu Xu Liu +8 位作者 Ziqian Liu Kai Hu Yingkuan Wang Jinglu Tan Min Huang Qibing Zhu Xunsheng Ji yongnian jiang Ya Guo 《International Journal of Agricultural and Biological Engineering》 SCIE EI CAS 2018年第4期32-44,共13页
In recent years,Deep Learning(DL),such as the algorithms of Convolutional Neural Networks(CNN),Recurrent Neural Networks(RNN)and Generative Adversarial Networks(GAN),has been widely studied and applied in various fiel... In recent years,Deep Learning(DL),such as the algorithms of Convolutional Neural Networks(CNN),Recurrent Neural Networks(RNN)and Generative Adversarial Networks(GAN),has been widely studied and applied in various fields including agriculture.Researchers in the fields of agriculture often use software frameworks without sufficiently examining the ideas and mechanisms of a technique.This article provides a concise summary of major DL algorithms,including concepts,limitations,implementation,training processes,and example codes,to help researchers in agriculture to gain a holistic picture of major DL techniques quickly.Research on DL applications in agriculture is summarized and analyzed,and future opportunities are discussed in this paper,which is expected to help researchers in agriculture to better understand DL algorithms and learn major DL techniques quickly,and further to facilitate data analysis,enhance related research in agriculture,and thus promote DL applications effectively. 展开更多
关键词 deep learning smart agriculture neural network convolutional neural networks recurrent neural networks generative adversarial networks artificial intelligence image processing pattern recognition
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Prediction of dissolved oxygen in a fishery pond based on gated recurrent unit (GRU) 被引量:6
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作者 Wuyan Li Hao Wu +3 位作者 Nanyang Zhu yongnian jiang Jinglu Tan Ya Guo 《Information Processing in Agriculture》 EI 2021年第1期185-193,共9页
Dissolved oxygen(DO),an important water quality indicator in aquaculture,affects the survival rate of aquatic creatures and the yield of aquatic production.Therefore,it is important to predict DO in fishery ponds for ... Dissolved oxygen(DO),an important water quality indicator in aquaculture,affects the survival rate of aquatic creatures and the yield of aquatic production.Therefore,it is important to predict DO in fishery ponds for applying artificial aeration with low energy and cost.Recently,deep learning models,such as recurrent neural network(RNN),long short-term memory(LSTM),and gated recurrent unit(GRU),are often used to predict the trend of time series,but it is unclear which one of them is more suitable for prediction of DO in fishery ponds.In this work,the RNN model,LSTM model,and GRU model were used to build three DO predicting models.The performance of the three models were compared by mean absolute error(MAE),mean square error(MSE),mean absolute percentage error(MAPE),and the coefficient of determination(R2).The performance of RNN is worse result than LSTM and GRU.The four evaluation indicators of GRU are 0.450 mg/L,0.411,0.054,and 0.994,and the four indicators of LSTM are 0.407 mg/L,0.294,0.059,and 0.970,which shows that the performance of GRU is similar to LSTM,but the time cost and number of parameters used for GRU is much lower than LSTM.It is concluded that the GRU has overall better performance and can be applied to practical applications. 展开更多
关键词 Dissolved oxygen RNN model LSTM model GRU model
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