Comparison and Retrieval of Situations in the Case-Based Reasoning System for Smart-Farm
- 作者: Glukhikh I.N1, Prokhoshin A.S2, Glukhikh D.I2
-
隶属关系:
- Institute of Mathematics and Computer Science
- University of Tyumen (UTMN)
- 期: 卷 22, 编号 4 (2023)
- 页面: 853-879
- 栏目: Digital information telecommunication technologies
- URL: https://bakhtiniada.ru/2713-3192/article/view/265823
- DOI: https://doi.org/10.15622/ia.22.4.6
- ID: 265823
如何引用文章
全文:
详细
作者简介
I. Glukhikh
Institute of Mathematics and Computer Science
Email: i.n.glukhikh@utmn.ru
Volodarskogo St. 6
A. Prokhoshin
University of Tyumen (UTMN)
Email: a.s.prokhoshin@utmn.ru
Volodarskogo St. 6
D. Glukhikh
University of Tyumen (UTMN)
Email: gluhihdmitry@gmail.com
Volodarskogo St. 6
参考
- Руткин Н.М., Лагуткин О.Ю., Лагуткина Л.Ю. Урбанизированное агропроизводство (сити-фермерство) как перспективное направление развития мирового агропроизводства и способ повышения продовольственной безопасности городов // Вестник астраханского государственного технического университета. серия: рыбное хозяйство. 2017. Т. 2017. № 4. С.95–108.
- Сурай Н.М., Кудинова М.Г., Уварова Е.В., Жидких Е.И. Анализ развития цифровых технологий в «умных» фермах // Инновации и инвестиции. 2021. № 10. С. 184–188.
- Martin M., Molin E. Environmental Assessment of an Urban Vertical Hydroponic Farming System in Sweden // Sustainability. 2019. vol. 11(15). no. 4124. doi: 10.3390/su11154124.
- Chiu M.-C., Yan W.-M., Bhat S.A., Huang N.-F. Development of smart aquaculture farm management system using IoT and AI-based surrogate models // Journal of Agriculture and Food Research. 2022. vol. 9. no. 100357. doi: 10.1016/j.jafr.2022.100357.
- Devapal D. Smart Agro Farm Solar Powered Soil and Weather Monitoring System for Farmers // Proceedings of International Multi-conference on Computing, Communication, Electrical & Nanotechnology, I2CN-2K19. 2020. pp. 1843–1854.
- He L., Fu L., Fang W., Sun X., Suo R., Li G., Zhao G., Yang R., Li R. IoT-based urban agriculture container farm design and implementation for localized produce supply // Computers and Electronics in Agriculture. 2022. vol. 203. no. 107445. doi: 10.1016/j.compag.2022.107445.
- Klaina H., Guembe I.P., Lopez-Iturri P., Campo-Bescós M.A., Azpilicueta L., Aghzout O., Alejos A.V., Falcone F. Analysis of low power wide area network wireless technologies in smart agriculture for large-scale farm monitoring and tractor communications // Measurement. 2022. vol. 187(5). no. 110231. doi: 10.1016/j.measurement.2021.110231.
- Махмудул Хасан А., Мд Ракиб Ул Ислам Р., Авинаш К. Классификация болезней листьев яблони с использованием набора данных изображений: подход многослойной сверточной нейронной сети // Информатика и автоматизация. 2022. Т. 21. № 4. C. 710–728. doi: 10.15622/ia.21.4.3
- Moreira R., Moreira L.F.R., Munhoz P.L.A., Lopes E.A., Ruas R.A.A. AgroLens: A low-cost and green-friendly Smart Farm Architecture to support real-time leaf disease diagnostics // Internet of Things. 2022. vol. 19. no. 100570. doi: 10.1016/j.iot.2022.100570.
- Hu W.-C., Chen L.-B., Huang B.-K., Lin H.-M. A Computer Vision-Based Intelligent Fish Feeding System Using Deep Learning Techniques for Aquaculture // IEEE Sensors Journal. 2022. vol. 22. no. 7. pp. 7185–7194. doi: 10.1109/JSEN.2022.3151777.
- Cho S., Kim T., Jung D.-H., Park S.H., Na Y., Ihn Y.S., Kim K.G. Plant growth information measurement based on object detection and image fusion using a smart farm robot // Computers and Electronics in Agriculture. 2023. vol. 207. no. 107703. doi: 10.1016/j.compag.2023.107703.
- Cerutti J., Abi-Zeid I., Lamontagne L., Lavoie R., Rodriguez-Pinzon M.J. A case-based reasoning tool to recommend drinking water source protection actions // Journal of Environmental Management. 2023. vol. 331. no. 117228. doi: 10.1016/j.jenvman.2023.117228.
- Zhai Z., Martínez J.F., Martínez N.L., Díaz V.H. Applying case-based reasoning and a learning-based adaptation strategy to irrigation scheduling in grape farming // Computers and Electronics in Agriculture. 2020. vol. 178. no. 105741. doi: 10.1016/j.compag.2020.105741.
- Wang D., Wan K., Ma W. Emergency decision-making model of environmental emergencies based on case-based reasoning method // Journal of Environmental Management. 2020. vol. 262(9). 110382. doi: 10.1016/j.jenvman.2020.110382.
- Mathisen B.M., Bach K., Aamodt A. Using extended siamese networks to provide decision support in aquaculture operations // Applied Intelligence. 2021. vol. 51(1). doi: 10.1007/s10489-021-02251-3.
- Aamodt A., Plaza E. Case-Based Reasoning: Foundational Issues, Methodological Variations, and System Approaches // AI Communications. 2001. vol. 7. pp. 39–59. doi: 10.3233/AIC-1994-7104.
- Скобелев П.О., Симонова Е.В., Будаев Д.В., Вощук Г.Ю., Ларюхин В.Б. Облачная интеллектуальная система SMART FARMING для управления точным земледелием // Материалы конференции «Информационные технологии в управлении (ИТУ-2018)» (г. Санкт-Петербург, 2–4 октября 2018 г.) Издательство: Концерн «Концерн «ЦНИИ «Электроприбор», 2018. С. 261–270.
- Leake D., Ye X., Crandall D. Supporting Case-Based Reasoning with Neural Networks: An Illustration for Case Adaptation // Proceedings of the AAAI 2021 Spring Symposium on Combining Machine Learning and Knowledge Engineering (AAAI-MAKE 2021). 2021. Available at: https://proceedings.aaai-make.info/AAAI-MAKE-PROCEEDINGS-2021/paper1.pdf. (accessed 26.05.2023).
- Guo Y., Zhang B., Sun Y., Jiang K., Wu K. Machine learning based feature selection and knowledge reasoning for CBR system under big data // Pattern Recognition. 2021. vol. 112(6). no. 107805. doi: 10.1016/j.patcog.2020.107805.
- Smiti A., Elouedi Z. Dynamic maintenance case base using knowledge discovery techniques for case based reasoning systems // Theoretical Computer Science. 2020. vol. 817. pp 24–32. doi: 10.1016/j.tcs.2019.06.026.
- Liao T.W., Zhang Z., Mount C.R. Similarity measures for retrieval in case-based reasoning systems // Applied Artificial Intelligence. 1998. vol. 12(4). pp. 267–288. doi: 10.1080/088395198117730.
- Fan Z.-P., Li Y.-H., Wang X., Liu Y. Hybrid similarity measure for case retrieval in CBR and its application to emergency response towards gas explosion // Expert Systems with Applications. 2014. vol. 41(5). pp. 2526–2534. doi: 10.1016/j.eswa.2013.09.051.
- Oyelade O.N., Ezugwu A.E. A case-based reasoning framework for early detection and diagnosis of novel coronavirus // Informatics in Medicine Unlocked. 2020. vol. 20(6). no. 100395. doi: 10.1016/j.imu.2020.100395.
- Gabel T., Godehardt E. Top-down induction of similarity measures using similarity clouds. International Conference on Case-Based Reasoning. 2015. pp. 149–16. doi: 10.1007/978-3-319-24586-7_11.
- Mathisen B.M., Aamodt A., Bach K., Langseth H. Learning similarity measures from data // Progress in Artificial Intelligence. 2020. vol. 9. pp. 129–143. doi: 10.1007/s13748-019-00201-2.
- Glukhikh I., Glukhikh D. Case-Based Reasoning with an Artificial Neural Network for Decision Support in Situations at Complex Technological Objects of Urban Infrastructure // Applied System Innovation. 2021. vol. 4(73). 12 p. doi: 10.3390/asi4040073.
- Глухих И.Н., Глухих Д.И. Алгоритмы генерации обучающих множеств в системе с прецедентным выводом на основе ситуаций-примеров // Программные продукты и системы. 2022. Т. 35. № 4. С. 660–669.
- Myttenaere A.D., Golden B., Grand B.L., Rossi F. Mean Absolute Percentage Error for regression models // Neurocomputing. 2016. vol. 192. pp. 38–48. doi: 10.1016/j.neucom.2015.12.114.
- Wang Y., Wang L., Li Y., He D., Liu T.-Y., Chen W. A Theoretical Analysis of NDCG Type Ranking Measures. Computer Science. 2013. 26 p. doi: 10.48550/arXiv.1304.6480.
- Taylor J.R. An Introduction to Error Analysis: The Study of Uncertainties in Physical Measurements, Second Edition, Paperback & Clothbound, 1997. 327 p.
- Paulson P., Juell P. Using Reinforcement Learning for Similarity Assessment in Case-Based Systems // IEEE Intelligent Systems. 2003. vol. 18. no. 4. pp. 60–67. doi: 10.1109/MIS.2003.1217629.
- Glukhikh I., Chernysheva T., Glukhikh D. Neural Network Models for Situation Similarity Assessment in hybrid-CBR // Journal of Intelligent & Fuzzy Systems. 2023. vol. 44(15). pp. 1–14. doi: 10.3233/JIFS-221335.
补充文件
