• Title/Summary/Keyword: 병충해 예측

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WSN and Knowledge bank based insect and disease management method in a vineyard (WSN 과 지식 은행(Knowledge bank)를 이용한 포도밭 병충해 관리 방법)

  • Lee, Jae-Hyung
    • Proceedings of the Korea Information Processing Society Conference
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    • 2012.11a
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    • pp.1146-1149
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    • 2012
  • 본 연구는 노지에서의 와인용 포도 재배에 있어서 병충해에 대한 실시간 모니터링과 선제적 예방활동을 위해 무선센서 네트워크(Wireless Sensor Network)를 활용하여 데이터를 수집하고 온습도정보, 이미지 등의 분석을 하고 병충해 지식은행을 통한 병충해 발생 확인 및 최적의 조치를 제안하여 와인용 포도의 병충해 피해를 예방하고 생산성을 높일 수 있도록 하는 시스템에 관한 것이다. WSN 센서 노드는 각 블럭 별 및 지형 특성상 높은 고도의 위치 등 다수의 지점에 설치되어 온도 습도 등 환경 데이터를 수집하고, 이미지 센서를 통해 주기적 이미지데이터를 전달하여 지식은행의 데이터를 바탕으로 병충해 발생으로 인한 와인용 포도 재배에 피해가 예상되는 현상을 미리 예측하고 그 해결방안을 제시하여 재배자가 선제적으로 대처할 수 있도록 하여 피해를 최소화한다.

Development of AI and IoT-based smart farm pest prediction system: Research on application of YOLOv5 and Isolation Forest models (AI 및 IoT 기반 스마트팜 병충해 예측시스템 개발: YOLOv5 및 Isolation Forest 모델 적용 연구)

  • Mi-Kyoung Park;Hyun Sim
    • The Journal of the Korea institute of electronic communication sciences
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    • v.19 no.4
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    • pp.771-780
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    • 2024
  • In this study, we implemented a real-time pest detection and prediction system for a strawberry farm using a computer vision model based on the YOLOv5 architecture and an Isolation Forest Classifier. The model performance evaluation showed that the YOLOv5 model achieved a mean average precision (mAP 0.5) of 78.7%, an accuracy of 92.8%, a recall of 90.0%, and an F1-score of 76%, indicating high predictive performance. This system was designed to be applicable not only to strawberry farms but also to other crops and various environments. Based on data collected from a tomato farm, a new AI model was trained, resulting in a prediction accuracy of over 85% for major diseases such as late blight and yellow leaf curl virus. Compared to the previous model, this represented an improvement of more than 10% in prediction accuracy.

기상변동 따른 병충해 발생예측모형 정립

  • 이종준
    • The Bimonthly Magazine for Agrochemicals and Plant Protection
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    • v.6 no.1
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    • pp.23-27
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    • 1985
  • 지난해에 이어 연속적인 풍년을 이룩하여 주곡의 안정적 자급을 유지하려는 것이 국민 모두의 염원이다. 그러나 풍년농사를 이룩한다는 것은 그렇게 쉬운 것은 아니다. 농민은 농민대로 연중 모든 어려움을 참고 꾸준히 노력하여야 하고 관계 유관기관에서는 농사가 잘 지어질 수 있도록 여러 가지 여건을 사전에 조성하여 주어야 한다. 따라서 금년에도 풍년농사를 기필코 달성하기 위하여 분야별로 치밀한 계획을 수립하여 사전준비를 단계적으로 추진중에 있다. 그중에서도 수량에 가장 영향을 많이 미치는 병충해 방제에 대한 금년도 대책을 약술하면 대략 다음과 같다.

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A Study on the Extraction of the Matsucoccus Thunbergianae Miller et Park Damaged Area from Satellite Image Data (인공위성 화상데이터를 이용한 솔껍질깍지벌레 피해지역의 추출기법에 관한 연구)

  • 안기원;이효성;서두천
    • Journal of the Korean Society of Surveying, Geodesy, Photogrammetry and Cartography
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    • v.15 no.2
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    • pp.287-298
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    • 1997
  • The main object of this study was to prove the effectiveness of satellite image data for extraction of the Matsucoccus Thenbergianae Miller ビt Park damaged area. The effectiveness of extraction of damaged area was improved by using the BRCT(Backwards radiance correction transformation) with DEM for normalization of topographic effects. The surface analysis of the extracted damaged area was revealed that the damage was started at south-west slope with the aspect of 7 to 18 degrees, and 50% to 70% of the highest altitude mountains. The direction of damage attached by the Matsucoccus Thunbergianae Miller et Park was able to predict through the analysis of periodical of years' images

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GIS application on weed control of Eleocharis kuroguwai in lowland rice field in Korea (GIS를 이용한 논 잡초 올방개의 방제연구)

  • ;;S.P.Kam
    • Spatial Information Research
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    • v.3 no.1
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    • pp.47-53
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    • 1995
  • The weed survey in lowland rice fields through Korea was conducted in 1992 to determine a change of the weed communities based on different regions, soil types, planting methods, and cultural practices. GIS was applied to identify a spatial analysis of predominant weed species in specific region. On behalf of vegetatine analysis such as absolute and relative density, absolute and relative frequency, importance value, and summed dominance ratio(SDR), there was highly dominant with a perennial weed species, Eleocharis kuroguwai Ohwi over whole country. However, in particular it was most predominant at southem area of Gyunggi province in Korea. Thus, rice farmers of this area have to introduce a specific comperhensive control strategy against this predominant weed species.

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Blockchain and AI-based big data processing techniques for sustainable agricultural environments (지속가능한 농업 환경을 위한 블록체인과 AI 기반 빅 데이터 처리 기법)

  • Yoon-Su Jeong
    • Advanced Industrial SCIence
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    • v.3 no.2
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    • pp.17-22
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    • 2024
  • Recently, as the ICT field has been used in various environments, it has become possible to analyze pests by crops, use robots when harvesting crops, and predict by big data by utilizing ICT technologies in a sustainable agricultural environment. However, in a sustainable agricultural environment, efforts to solve resource depletion, agricultural population decline, poverty increase, and environmental destruction are constantly being demanded. This paper proposes an artificial intelligence-based big data processing analysis method to reduce the production cost and increase the efficiency of crops based on a sustainable agricultural environment. The proposed technique strengthens the security and reliability of data by processing big data of crops combined with AI, and enables better decision-making and business value extraction. It can lead to innovative changes in various industries and fields and promote the development of data-oriented business models. During the experiment, the proposed technique gave an accurate answer to only a small amount of data, and at a farm site where it is difficult to tag the correct answer one by one, the performance similar to that of learning with a large amount of correct answer data (with an error rate within 0.05) was found.

A Development of Damaged Spread Model of the Pine Needle Gall Midge Using Satellite Image Data (인공위성 화상데이터를 이용한 솔잎혹파리 피해 확산모델의 개발)

  • Ahn, Ki-Won;Lee, Hyo-Sung;Seo, Doo-Chun;Shin, Sok-Hyo
    • Journal of Korean Society for Geospatial Information Science
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    • v.6 no.2 s.12
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    • pp.105-117
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    • 1998
  • The main object of this study was to prove the effectiveness of satellite Image data for extraction of the pine needle gall midge damaged area in the part of Kangwon-do area, and to present the detailed procedure of a digital image processing for extraction of those damaged area. The effectiveness of extraction of damaged area was improved by using the BRCT(Backwards Radiance Correction Transformation) with DEM for the normalization of topographic effects. The topographic surface analysis of the extracted damaged area revealed that the general damaged area was at south-west and south-east aspect with the slope of 31 to 38 degrees, the temperature of 21 to 25, and 23% to 39% of the highest altitude mountains. The new damaged area in which expanded area was at 27 to 30 degree of slope, the aspect of 46 to 180 degrees, the temperature of $11^{\circ}C\;to\;12^{\circ}C$ and 27% to 39% of the highest altitude mountains. The NDI(New Damaged Index) was developed using the environment factor and simple vegetation index.

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Application of GIS to the Universal Soil Loss Equation for Quantifying Rainfall Erosion in Forest Watersheds (산림유역의 토양유실량(土壤流失量) 예측을 위한 지리정보(地理情報)시스템의 범용토양유실식(汎用土壤流失式)(USLE)에의 적용)

  • Lee, Kyu Sung
    • Journal of Korean Society of Forest Science
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    • v.83 no.3
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    • pp.322-330
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    • 1994
  • The Universal Soil Loss Equation (USLE) has been widely used to predict long-term soil loss by incorporating several erosion factors, such as rainfall, soil, topography, and vegetation. This study is aimed to introduce the LISLE within geographic information system(GIS) environment. The Kwangneung Experimental Forest located in Kyongki Province was selected for the study area. Initially, twelve years of hourly rainfall records that were collected from 1982 to 1993 were processed to obtain the rainfall factor(R) value for the LISLE calculation. Soil survey map and topographic map of the study area were digitized and subsequent input values(K, L, S factors) were derived. The cover type and management factor (C) values were obtained from the classification of Landsat Thematic Mapper(CM) satellite imagery. All these input values were geographically registered over a common map coordinate with $25{\times}25m^2$ ground resolution. The USLE was calculated for every grid location by selecting necessary input values from the digital base maps. Once the LISLE was calculated, the resultant soil loss values(A) were represented by both numerical values and map format. Using GIS to run the LISLE, it is possible to pent out the exact locations where soil loss potential is high. In addition, this approach can be a very effective tool to monitor possible soil loss hazard under the situations of forest changes, such as conversion of forest lands to other uses, forest road construction, timber harvesting, and forest damages caused by fire, insect, and diseases.

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Utilization of Smart Farms in Open-field Agriculture Based on Digital Twin (디지털 트윈 기반 노지스마트팜 활용방안)

  • Kim, Sukgu
    • Proceedings of the Korean Society of Crop Science Conference
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    • 2023.04a
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    • pp.7-7
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    • 2023
  • Currently, the main technologies of various fourth industries are big data, the Internet of Things, artificial intelligence, blockchain, mixed reality (MR), and drones. In particular, "digital twin," which has recently become a global technological trend, is a concept of a virtual model that is expressed equally in physical objects and computers. By creating and simulating a Digital twin of software-virtualized assets instead of real physical assets, accurate information about the characteristics of real farming (current state, agricultural productivity, agricultural work scenarios, etc.) can be obtained. This study aims to streamline agricultural work through automatic water management, remote growth forecasting, drone control, and pest forecasting through the operation of an integrated control system by constructing digital twin data on the main production area of the nojinot industry and designing and building a smart farm complex. In addition, it aims to distribute digital environmental control agriculture in Korea that can reduce labor and improve crop productivity by minimizing environmental load through the use of appropriate amounts of fertilizers and pesticides through big data analysis. These open-field agricultural technologies can reduce labor through digital farming and cultivation management, optimize water use and prevent soil pollution in preparation for climate change, and quantitative growth management of open-field crops by securing digital data for the national cultivation environment. It is also a way to directly implement carbon-neutral RED++ activities by improving agricultural productivity. The analysis and prediction of growth status through the acquisition of the acquired high-precision and high-definition image-based crop growth data are very effective in digital farming work management. The Southern Crop Department of the National Institute of Food Science conducted research and development on various types of open-field agricultural smart farms such as underground point and underground drainage. In particular, from this year, commercialization is underway in earnest through the establishment of smart farm facilities and technology distribution for agricultural technology complexes across the country. In this study, we would like to describe the case of establishing the agricultural field that combines digital twin technology and open-field agricultural smart farm technology and future utilization plans.

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Estimation of Fresh Weight and Leaf Area Index of Soybean (Glycine max) Using Multi-year Spectral Data (다년도 분광 데이터를 이용한 콩의 생체중, 엽면적 지수 추정)

  • Jang, Si-Hyeong;Ryu, Chan-Seok;Kang, Ye-Seong;Park, Jun-Woo;Kim, Tae-Yang;Kang, Kyung-Suk;Park, Min-Jun;Baek, Hyun-Chan;Park, Yu-hyeon;Kang, Dong-woo;Zou, Kunyan;Kim, Min-Cheol;Kwon, Yeon-Ju;Han, Seung-ah;Jun, Tae-Hwan
    • Korean Journal of Agricultural and Forest Meteorology
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    • v.23 no.4
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    • pp.329-339
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    • 2021
  • Soybeans (Glycine max), one of major upland crops, require precise management of environmental conditions, such as temperature, water, and soil, during cultivation since they are sensitive to environmental changes. Application of spectral technologies that measure the physiological state of crops remotely has great potential for improving quality and productivity of the soybean by estimating yields, physiological stresses, and diseases. In this study, we developed and validated a soybean growth prediction model using multispectral imagery. We conducted a linear regression analysis between vegetation indices and soybean growth data (fresh weight and LAI) obtained at Miryang fields. The linear regression model was validated at Goesan fields. It was found that the model based on green ratio vegetation index (GRVI) had the greatest performance in prediction of fresh weight at the calibration stage (R2=0.74, RMSE=246 g/m2, RE=34.2%). In the validation stage, RMSE and RE of the model were 392 g/m2 and 32%, respectively. The errors of the model differed by cropping system, For example, RMSE and RE of model in single crop fields were 315 g/m2 and 26%, respectively. On the other hand, the model had greater values of RMSE (381 g/m2) and RE (31%) in double crop fields. As a result of developing models for predicting a fresh weight into two years (2018+2020) with similar accumulated temperature (AT) in three years and a single year (2019) that was different from that AT, the prediction performance of a single year model was better than a two years model. Consequently, compared with those models divided by AT and a three years model, RMSE of a single crop fields were improved by about 29.1%. However, those of double crop fields decreased by about 19.6%. When environmental factors are used along with, spectral data, the reliability of soybean growth prediction can be achieved various environmental conditions.