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“地头力”
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作者 王明夫 《新华商》 2009年第5期66-67,共2页
我们这几代人最致命的一个错误是,从小就被教育和教育孩子们要争当第一、要出人头地,要成为最棒的。做企业开始就奔着大规模和一流去的,而不讲究把产品和业务做细。目标与手段之间,常常有不少鸿沟,人们就动用各种各样的精巧计算或... 我们这几代人最致命的一个错误是,从小就被教育和教育孩子们要争当第一、要出人头地,要成为最棒的。做企业开始就奔着大规模和一流去的,而不讲究把产品和业务做细。目标与手段之间,常常有不少鸿沟,人们就动用各种各样的精巧计算或欺骗,还美其名曰用智慧跨越。 展开更多
关键词 企业领导 企业管理 “地头力” 金融危机
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Application of the improved dung beetle optimizer,muti-head attention and hybrid deep learning algorithms to groundwater depth prediction in the Ningxia area,China
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作者 Jiarui Cai Bo Sun +5 位作者 Huijun Wang Yi Zheng Siyu Zhou Huixin Li Yanyan Huang Peishu Zong 《Atmospheric and Oceanic Science Letters》 2025年第1期18-23,共6页
Due to the lack of accurate data and complex parameterization,the prediction of groundwater depth is a chal-lenge for numerical models.Machine learning can effectively solve this issue and has been proven useful in th... Due to the lack of accurate data and complex parameterization,the prediction of groundwater depth is a chal-lenge for numerical models.Machine learning can effectively solve this issue and has been proven useful in the prediction of groundwater depth in many areas.In this study,two new models are applied to the prediction of groundwater depth in the Ningxia area,China.The two models combine the improved dung beetle optimizer(DBO)algorithm with two deep learning models:The Multi-head Attention-Convolution Neural Network-Long Short Term Memory networks(MH-CNN-LSTM)and the Multi-head Attention-Convolution Neural Network-Gated Recurrent Unit(MH-CNN-GRU).The models with DBO show better prediction performance,with larger R(correlation coefficient),RPD(residual prediction deviation),and lower RMSE(root-mean-square error).Com-pared with the models with the original DBO,the R and RPD of models with the improved DBO increase by over 1.5%,and the RMSE decreases by over 1.8%,indicating better prediction results.In addition,compared with the multiple linear regression model,a traditional statistical model,deep learning models have better prediction performance. 展开更多
关键词 Groundwater depth Multi-head attention Improved dung beetle optimizer CNN-LSTM CNN-GRU Ningxia
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Causes and prevention measures of foundation settlement of gravity type wharf
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作者 YANG Yue 《International English Education Research》 2016年第4期30-32,共3页
foundation settlement is one of the common problems in the construction and use of gravity wharf. Causes gravity type wharf foundation settlement reason is very complex. Based on the full understanding of the concept ... foundation settlement is one of the common problems in the construction and use of gravity wharf. Causes gravity type wharf foundation settlement reason is very complex. Based on the full understanding of the concept of gravity quay wall, this paper analyzes the reasons of the foundation settlement of gravity wharf. And Put forward the corresponding prevention and countermeasures. 展开更多
关键词 Gravity wharf Foundation settlement REASON Control countermeasure
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