7 results on '"Maoling Yan"'
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2. Information collection system of duck products based on IoT
- Author
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Rui Zhao, Lining Liu, Fujiang Wen, Chao Zhang, Maoling Yan, Xueru Yu, and Pingzeng Liu
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IoT ,Duck product traceability ,Computer Networks and Communications ,Computer science ,media_common.quotation_subject ,lcsh:TK7800-8360 ,02 engineering and technology ,Linkage (mechanical) ,computer.software_genre ,Information collection system ,law.invention ,lcsh:Telecommunication ,0404 agricultural biotechnology ,law ,lcsh:TK5101-6720 ,0202 electrical engineering, electronic engineering, information engineering ,Quality (business) ,media_common ,Structure (mathematical logic) ,RFID ,Terminal (telecommunication) ,Database ,Industrial chain ,business.industry ,lcsh:Electronics ,020206 networking & telecommunications ,04 agricultural and veterinary sciences ,040401 food science ,Automation ,Computer Science Applications ,Product (business) ,Signal Processing ,Management system ,business ,computer - Abstract
In view of the problems existing in the processing of duck products, such as complicated technology, difficulties in information collection and information linkage, and lack of dedicated information collection equipment, the duck product traceability information of the Institute of Things automatic collection system was developed. Acquisition system is mainly composed of sensing terminals, bus structure, and host computer management system. Perceiving the terminal can automatically perceive the information of each link and transmit the perception information to the upper computer management system through the bus. The upper computer management system realizes the functions of storing the sensing information, intelligent analysis, and alarm prompting. The long-term operation results show that the system performance is stable and reliable; the collection of data is efficient, complete, and accurate; and the degree of automation of the system is high, which significantly improves the product quality and safety supervision capabilities of the company.
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- 2018
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3. Handling the adversarial attacks
- Author
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Maoling Yan, Yongbin Zhao, Ning Cao, Jing Li, Yingying Wang, Sun Qian, Guofu Li, and Pengjia Zhu
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020203 distributed computing ,General Computer Science ,Artificial neural network ,business.industry ,Network security ,Computer science ,Computational intelligence ,02 engineering and technology ,Machine learning ,computer.software_genre ,Random forest ,Adversarial system ,Robustness (computer science) ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,Artificial intelligence ,Cluster analysis ,business ,computer - Abstract
The i.i.d assumption is the corner stone of most conventional machine learning algorithms. However, reducing the bias and variance of the learning model on the i.i.d dataset may not help the model to prevent from their failure on the adversarial samples, which are intentionally generated by either the malicious users or its rival programs. This paper gives a brief introduction of machine learning and adversarial learning, discussing the research frontier of the adversarial issues noticed by both the machine learning and network security field. We argue that one key reason of the adversarial issue is that the learning algorithms may not exploit the input feature set enough, so that the attackers can focus on a small set of features to trick the model. To address this issue, we consider two important classes of classifiers. For random forest, we propose a type of random forest called Weighted Random Forest (WRF) to encourage the model to give even credits to the input features. This approach can be further improved by careful selection of a subset of trees based on the clustering analysis during the run time. For neural networks, we propose to introduce extra soft constraints based on the weight variance to the objective function, such that the model would base the classification decision on more evenly distributed feature impact. Empirical experiments show that these approaches can effectively improve the robustness of the learnt model against their baseline systems.
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- 2018
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4. Research on precision management of farming season based on big data
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Weijie Chen, Rui Zhao, Maoling Yan, Xuefei Liu, Chao Zhang, Yuqi Liu, Fujiang Wen, and Pingzeng Liu
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Precise management ,Index (economics) ,020205 medical informatics ,Computer Networks and Communications ,Computer science ,Winter wheat ,Big data ,lcsh:TK7800-8360 ,02 engineering and technology ,Agricultural engineering ,Association rules ,lcsh:Telecommunication ,Data governance ,lcsh:TK5101-6720 ,0502 economics and business ,0202 electrical engineering, electronic engineering, information engineering ,Precipitation ,Agricultural productivity ,Agricultural big data ,Atmospheric pressure ,business.industry ,lcsh:Electronics ,05 social sciences ,Computer Science Applications ,Agriculture ,Signal Processing ,Correlation analysis ,Sunshine duration ,Mining analysis ,business ,050203 business & management - Abstract
In order to strengthen the scientific management of saline-alkali land and the accurate management of agricultural production, a scientific data governance platform for saline-alkali land was developed. Based on the data accumulation of big data platform, the relationship between wheat growth and meteorology was taken as the research object. Thirteen variables including atmospheric pressure, temperature, light, and precipitation were extracted from surface meteorological data for correlation analysis, and temperature, precipitation, and sunshine were selected as the characteristic variables; through discretization processing, we have finally determined the three indicators that can be categorized: accumulative temperature, sunshine hours, and temperature. Finally, the three indicators are combined with months to build a model of farming season and weather based on Apriori. The results show that when judging the farming season with the month as the index, the accuracy of the model is between 78.81 and 100%. When the temperature or accumulated temperature is taken as the index to judge the winter wheat farming time, the accuracy of the model is above 90%. This shows that accurate analysis of farming season can be achieved through big data correlation analysis, which provides technical support for the timely adoption of agricultural production.
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- 2018
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5. Application of Temperature Prediction Based on Neural Network in Intrusion Detection of IoT
- Author
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Jianyong Zhang, Xuefei Liu, Pingzeng Liu, Maoling Yan, Russell Higgs, Chao Zhang, and Baojia Wang
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Artificial neural network ,Article Subject ,Computer Networks and Communications ,Network security ,business.industry ,Computer science ,020209 energy ,Real-time computing ,02 engineering and technology ,Construct (python library) ,Intrusion detection system ,Complex network ,01 natural sciences ,010101 applied mathematics ,Intrusion ,lcsh:Technology (General) ,0202 electrical engineering, electronic engineering, information engineering ,lcsh:T1-995 ,Autoregressive integrated moving average ,0101 mathematics ,business ,Internet of Things ,lcsh:Science (General) ,Information Systems ,lcsh:Q1-390 - Abstract
The security of network information in the Internet of Things faces enormous challenges. The traditional security defense mechanism is passive and certain loopholes. Intrusion detection can carry out network security monitoring and take corresponding measures actively. The neural network-based intrusion detection technology has specific adaptive capabilities, which can adapt to complex network environments and provide high intrusion detection rate. For the sake of solving the problem that the farmland Internet of Things is very vulnerable to invasion, we use a neural network to construct the farmland Internet of Things intrusion detection system to detect anomalous intrusion. In this study, the temperature of the IoT acquisition system is taken as the research object. It has divided which into different time granularities for feature analysis. We provide the detection standard for the data training detection module by comparing the traditional ARIMA and neural network methods. Its results show that the information on the temperature series is abundant. In addition, the neural network can predict the temperature sequence of varying time granularities better and ensure a small prediction error. It provides the testing standard for the construction of an intrusion detection system of the Internet of Things.
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- 2018
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6. A farmland-microclimate monitoring system based on the internet of things
- Author
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Xiujuan Wang, Changqing Song, Maoling Yan, Cezhong Tong, Russell Higgs, Pingzeng Liu, Gregory M. P. O'Hare, and Fujiang Wen
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business.industry ,Computer science ,Reliability (computer networking) ,Real-time computing ,Microclimate ,Application layer ,Hardware and Architecture ,Data integrity ,Computer data storage ,Precision agriculture ,General Packet Radio Service ,business ,Wireless sensor network ,Software - Abstract
Farmland's microclimate is a vital environmental factor that affects crop growth and yield formation. Based on clear perception, reliable transmission and intelligent processing of IoT concepts, a monitoring system of farmland microclimate is developed. The monitoring system consists of three layers. The perception layer integrates meteorological, soil, hydrological and other sensors to form a ground to air sensor cluster. The transport layer utilises the GPRS technology which covers the entire country for long distance and effectively transfers the collected data to the server in real time. The application layer is developed for receiving PC software and data storage. After three years of system operation, we have done statistical analysis on the length of life, the loss of data and the reliability of data. Results reveal that the system could ensure more than 80% of data integrity, and it can also secure good stability and reliability of the data.
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- 2018
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7. Quantitative Research on the Relationship between Yield of Winter Wheat and Agroclimatological Resources—the Case Study from Yanzhou District, Shandong Province, China
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Rui Zhao, Yong Zheng, Chao Zhang, Weijie Chen, Maoling Yan, Yan Zhang, Xizhi Wang, and Pingzeng Liu
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0106 biological sciences ,010504 meteorology & atmospheric sciences ,business.industry ,Crop yield ,Yield (finance) ,Sowing ,General Medicine ,General Chemistry ,01 natural sciences ,Agronomy ,Agriculture ,Sunshine duration ,Environmental science ,Stage (hydrology) ,Agricultural productivity ,business ,Overwintering ,010606 plant biology & botany ,0105 earth and related environmental sciences - Abstract
Agroclimatological resources provide material and energy for agricultural production. This study is aimed to analyze the impact of selected climate factors change on wheat yield over the different growth period applied quantitatively method, by comparing two different time division modules of wheat growth cycle- monthly empirical-statistical multiple regression models ( From October to June of next year ) and growth stage empirical-statistical multiple regression models (Including sowing stage, seedling stage, tillering stage, overwintering period, regreening period, jointing stage, heading stage, maturity stage) analysis of relationship between agrometeorological data and growth stage records and winter wheat production in Yanzhou, Shandong Province of China. Correlation analysis(CA)was done for 35 years (from 1981 to 2015) between crop yield and corresponding weather parameters including daily mean temperature, sunshine duration, and average daily precipitation selected from 18 different meteorological factors. The results shows that the greatest impact on the winter wheat yield is the precipitation overwintering period in this area, each 1mm increase in daily mean rainfall was associated with 201.64 kg/hm2 lowered output. Moreover, the temperature and sunshine duration in heading period and maturity stage also exert significant influence on the output, every 1°C increase in daily mean temperature was associated with 199.85kg/hm2 adding output, every 1h increase in mean sunshine duration was associated with 130.68kg/hm2 reduced output. Comparing with the results of experiment which using months as step sizes and using farming as step sizes was in better agreement with the fluctuation in meteorological yield, offered a better explanation on the growth mechanism of wheat. Eventually the results indicated that 3 factors affects the yield during different growing periods of wheat in different extent and provided more specific reference to guide the agricultural production management in this area.
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- 2018
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