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中考历史命题的学理、伦理与格理
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作者 骆增翼 骆一鸣 《教学与管理》 北大核心 2025年第7期68-72,共5页
剖析中考历史试题命制背后的学理依据、伦理考量及审核标准,是保障考试公正性、教育功效及文化承传的关键所在。高质量的中考历史命题需要关注试题的学理深度、伦理导向性、格理严谨度。学理深度指命题要致力于知识、能力与素养的立体整... 剖析中考历史试题命制背后的学理依据、伦理考量及审核标准,是保障考试公正性、教育功效及文化承传的关键所在。高质量的中考历史命题需要关注试题的学理深度、伦理导向性、格理严谨度。学理深度指命题要致力于知识、能力与素养的立体整合,确保历史教育涵盖广泛的知识点,深化学生的学习体验,锤炼其高级思维技巧,促进其全面发展;伦理导向指命题要强调知识传授与价值引导的共进,借助历史案例引导学生形成健康的价值观,达成知行合一,涵养良好品性;格理严谨指命题要兼顾规范性与创造性,严格遵循标准基础上鼓励创新,保证历史命题既有权威性又能激发求知欲,体现教育的艺术性和活力。 展开更多
关键词 中考历史命题 学理深度 伦理导向 格理严谨
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Deep learning-based intelligent management for sewage treatment plants 被引量:2
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作者 WAN Ke-yi DU Bo-xin +5 位作者 WANG Jian-hui GUO Zhi-wei FENG Dong GAO Xu SHEN Yu YU Ke-ping 《Journal of Central South University》 SCIE EI CAS CSCD 2022年第5期1537-1552,共16页
It is generally believed that intelligent management for sewage treatment plants(STPs) is essential to the sustainable engineering of future smart cities.The core of management lies in the precise prediction of daily ... It is generally believed that intelligent management for sewage treatment plants(STPs) is essential to the sustainable engineering of future smart cities.The core of management lies in the precise prediction of daily volumes of sewage.The generation of sewage is the result of multiple factors from the whole social system.Characterized by strong process abstraction ability,data mining techniques have been viewed as promising prediction methods to realize intelligent STP management.However,existing data mining-based methods for this purpose just focus on a single factor such as an economical or meteorological factor and ignore their collaborative effects.To address this challenge,a deep learning-based intelligent management mechanism for STPs is proposed,to predict business volume.Specifically,the grey relation algorithm(GRA) and gated recursive unit network(GRU) are combined into a prediction model(GRAGRU).The GRA is utilized to select the factors that have a significant impact on the sewage business volume,and the GRU is set up to output the prediction results.We conducted a large number of experiments to verify the efficiency of the proposed GRA-GRU model. 展开更多
关键词 deep learning intelligent management sewage treatment plants grey relation algorithm gated recursive unit
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Test method of laser paint removal based on multi-modal feature fusion
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作者 HUANG Hai-peng HAO Ben-tian +2 位作者 YE De-jun GAO Hao LI Liang 《Journal of Central South University》 SCIE EI CAS CSCD 2022年第10期3385-3398,共14页
Laser cleaning is a highly nonlinear physical process for solving poor single-modal(e.g., acoustic or vision)detection performance and low inter-information utilization. In this study, a multi-modal feature fusion net... Laser cleaning is a highly nonlinear physical process for solving poor single-modal(e.g., acoustic or vision)detection performance and low inter-information utilization. In this study, a multi-modal feature fusion network model was constructed based on a laser paint removal experiment. The alignment of heterogeneous data under different modals was solved by combining the piecewise aggregate approximation and gramian angular field. Moreover, the attention mechanism was introduced to optimize the dual-path network and dense connection network, enabling the sampling characteristics to be extracted and integrated. Consequently, the multi-modal discriminant detection of laser paint removal was realized. According to the experimental results, the verification accuracy of the constructed model on the experimental dataset was 99.17%, which is 5.77% higher than the optimal single-modal detection results of the laser paint removal. The feature extraction network was optimized by the attention mechanism, and the model accuracy was increased by 3.3%. Results verify the improved classification performance of the constructed multi-modal feature fusion model in detecting laser paint removal, the effective integration of acoustic data and visual image data, and the accurate detection of laser paint removal. 展开更多
关键词 laser cleaning multi-modal fusion image processing deep learning
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A survey of deep learning-based visual question answering 被引量:1
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作者 HUANG Tong-yuan YANG Yu-ling YANG Xue-jiao 《Journal of Central South University》 SCIE EI CAS CSCD 2021年第3期728-746,共19页
With the warming up and continuous development of machine learning,especially deep learning,the research on visual question answering field has made significant progress,with important theoretical research significanc... With the warming up and continuous development of machine learning,especially deep learning,the research on visual question answering field has made significant progress,with important theoretical research significance and practical application value.Therefore,it is necessary to summarize the current research and provide some reference for researchers in this field.This article conducted a detailed and in-depth analysis and summarized of relevant research and typical methods of visual question answering field.First,relevant background knowledge about VQA(Visual Question Answering)was introduced.Secondly,the issues and challenges of visual question answering were discussed,and at the same time,some promising discussion on the particular methodologies was given.Thirdly,the key sub-problems affecting visual question answering were summarized and analyzed.Then,the current commonly used data sets and evaluation indicators were summarized.Next,in view of the popular algorithms and models in VQA research,comparison of the algorithms and models was summarized and listed.Finally,the future development trend and conclusion of visual question answering were prospected. 展开更多
关键词 computer vision natural language processing visual question answering deep learning attention mechanism
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