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耐久性抗菌超疏水棉织物的制备及其性能
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作者 王心雨 郭明明 +3 位作者 张乐乐 郑伟杰 amjad farooq 王宗乾 《纺织学报》 EI CAS CSCD 北大核心 2024年第11期170-177,共8页
为提升棉织物抗菌超疏水的耐久性能,采用L-半胱氨酸接枝法将纳米银颗粒负载到棉纤维上,后经聚二甲基硅氧烷(PDMS)涂层整理制备了兼有抗菌超疏水多功能的棉织物,对其化学结构,微观形貌,超疏水和抗菌性能及其耐久性进行测试,同时考察了整... 为提升棉织物抗菌超疏水的耐久性能,采用L-半胱氨酸接枝法将纳米银颗粒负载到棉纤维上,后经聚二甲基硅氧烷(PDMS)涂层整理制备了兼有抗菌超疏水多功能的棉织物,对其化学结构,微观形貌,超疏水和抗菌性能及其耐久性进行测试,同时考察了整理对织物透气、柔软性能的影响。结果表明:经L-半胱氨酸接枝的纳米银在棉纤维上呈颗粒状,后经PDMS涂层在棉纤维表面形成致密膜,纳米银被覆盖进一步提高负载牢度;棉织物表面静态接触角达154.6°,具有优异的自清洁性能,对大肠杆菌和金黄色葡萄球菌的抑菌率分别为98.67%、97.44%;经40次水洗后棉织物的静态接触角仍高于150.6°,对2种细菌的抑菌率均高于95.25%,具有优异的耐久性,且整理并未影响棉织物的透湿性能和柔软性能。 展开更多
关键词 棉织物 抗菌 超疏水 耐久性 自清洁 功能性纺织品
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Artificial Intelligence Based Meteorological Parameter Forecasting for Optimizing Response of Nuclear Emergency Decision Support System
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作者 BILAL Ahmed Khan HASEEB ur Rehman +5 位作者 QAISAR Nadeem MUHAMMAD Ahmad Naveed Qureshi JAWARIA Ahad MUHAMMAD Naveed Akhtar amjad farooq MASROOR Ahmad 《原子能科学技术》 EI CAS CSCD 北大核心 2024年第10期2068-2076,共9页
This paper presents a novel artificial intelligence (AI) based approach to predict crucial meteorological parameters such as temperature,pressure,and wind speed,typically calculated from computationally intensive weat... This paper presents a novel artificial intelligence (AI) based approach to predict crucial meteorological parameters such as temperature,pressure,and wind speed,typically calculated from computationally intensive weather research and forecasting (WRF) model.Accurate meteorological data is indispensable for simulating the release of radioactive effluents,especially in dispersion modeling for nuclear emergency decision support systems.Simulation of meteorological conditions during nuclear emergencies using the conventional WRF model is very complex and time-consuming.Therefore,a new artificial neural network (ANN) based technique was proposed as a viable alternative for meteorological prediction.A multi-input multi-output neural network was trained using historical site-specific meteorological data to forecast the meteorological parameters.Comprehensive evaluation of this technique was conducted to test its performance in forecasting various parameters including atmospheric pressure,temperature,and wind speed components in both East-West and North-South directions.The performance of developed network was evaluated on an unknown dataset,and acquired results are within the acceptable range for all meteorological parameters.Results show that ANNs possess the capability to forecast meteorological parameters,such as temperature and pressure,at multiple spatial locations within a grid with high accuracy,utilizing input data from a single station.However,accuracy is slightly compromised when predicting wind speed components.Root mean square error (RMSE) was utilized to report the accuracy of predicted results,with values of 1.453℃for temperature,77 Pa for predicted pressure,1.058 m/s for the wind speed of U-component and 0.959 m/s for the wind speed of V-component.In conclusion,this approach offers a precise,efficient,and wellinformed method for administrative decision-making during nuclear emergencies. 展开更多
关键词 prediction of meteorological parameters weather research and forecasting model artificial neural networks nuclear emergency support system
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Monitoring of Unaccounted for Gas in Energy Domain Using Semantic Web Technologies
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作者 Kausar Parveen Ghalib A.Shah +1 位作者 Muhammad Aslam amjad farooq 《Computer Systems Science & Engineering》 SCIE EI 2021年第1期41-56,共16页
Smart Urbanization has increased tremendously over the last few years,and this has exacerbated problems in all areas of life,especially in the energy sector.The Internet of Things(IoT)is providing effective solutions ... Smart Urbanization has increased tremendously over the last few years,and this has exacerbated problems in all areas of life,especially in the energy sector.The Internet of Things(IoT)is providing effective solutions in gas distribution,transmission and billing through very sophisticated sensory devices and software.Billions of heterogeneous devices link to each other in smart urbanization,and this has led to the Semantic interoperability(SI)problem between the connected devices.In the energy field,such as electricity and gas,several devices are interlinked.These devices are competent for their specific operational role but unable to communicate across the operational units as required for accounting and monitoring of gas losses due to heterogeneity in device communication standards.To overcome this problem,we have proposed a model and ontology by applying semantic web technologies and cloud storage to address the tracking of customers to observe Unaccounted for gas(UFG)in the gas domain of energy.Semantization is achieved by replicating heterogeneous devices Sensor Model Language(SenML)data into Resource description framework(RDF)without human interventions.As semantic interoperability is used to efficiently and meaningfully share the information from one location to another.Therefore,the proposed ontology and model focus more efficiently on customer tracking,forecasting,and monitoring to detect UFG in gas networks.This also helps to save Gas Companies from financial gas losses. 展开更多
关键词 Internet of Things semantic interoperability unaccounted for gas ONTOLOGY resource description framework sensor markup language
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