logo
calendar23 октябр 2025
view2
Asosiy til:O'zbek

ZAMONAVIY ISSIQXONALARDA HARORAT VA NISBIY NAMLIKNI BOSHQARISHDA TIZIMNI IDENTIFIKATSIYALASH ASOSLARI

Fan yo'nalishi:
pdf

68f9c305cd13a.pdf

PDF

MAQOLA ANNOTATSIYASI

quote
Ushbu maqolada O‘zbekiston iqlim sharoitida issiqxonada harorat va nisbiy namlik parametrlarini samarali boshqarish maqsadida tizimni identifikatsiyalash masalasi chiziqli ARX (AutoRegressive with eXogenous input) modeli asosida tadqiq etilgan. Mazkur tadqiqot ishida real vaqtli eksperimental o‘lchovlar asosida mikroiqlim parametrlari dinamikasini ifodalovchi matematik model qurish hamda ushbu model negizida avtomatik boshqaruv tizimining ilmiy asoslarini ishlab chiqish maqsad qilingan. O‘zbekistonda issiqxonalarning keng joriy etilishi, agrotexnologik jarayonlarning barqarorligini ta’minlash, energiya va suv resurslaridan tejamkor foydalanish hamda global iqlim o‘zgarishlariga moslashish zaruriyati ushbu tadqiqotning dolzarbligini belgilaydi. Tadqiqot metodologiyasi sifatida ARX model strukturasini tanlash, parametrlarni baholash va modelning adekvatligini tekshirishda MATLAB Toolbox vositalaridan foydalanildi. Olingan natijalar mikroiqlim parametrlarini aniq boshqarishga qaratilgan zamonaviy regulyatorlar ishlab chiqish uchun ilmiy-amaliy asos yaratadi. Modelning hisoblashdagi soddaligi, tezkorligi va real vaqtli tizimlarga integratsiyalash imkoniyati uni amaliy sharoitlarda, xususan, O‘zbekiston issiqxonalarida samarali qo‘llash imkonini beradi. Chiziqli ARX modelidan foydalanish issiqxonalarda harorat va namlikni avtomatik boshqarish tizimlarining aniqligi hamda ishonchliligini oshirishda samarali yechim bo‘lishi asoslab berilgan.

MUALIFLAR

Teglar

# температура# harorat# temperature# relative humidity# относительная влажность# nisbiy namlik# issiqxona mikroiqlimi# ARX modeli# tizim identifikatsiyasi# mikroiqlim dinamikasi# MATLAB Toolbox.# микроклимат теплицы# ARX-модель# идентификация системы# динамика микро- климата# Greenhouse microclimate# ARX model# System identi�ication# Microclimate dynamics

Maqolani baholang

0

0 ta

Maqola idintifikatorlari

Foydalanilgan adabiyotlar

Adeyemi, O., Grove, I., Peets, S., & Domun, T. (2018). Dynamic neural network modelling of soil moisture content for predictive irrigation scheduling. Sensors, 18(3408). https://doi.org/10.3390/ s18103408

Altes-Buch, Q., Quoilin, S., & Lemort, V. (2019, March). Greenhouses: A Modelica library for the simulation of greenhouse climate and energy systems. In Proceedings of the 13th International Modelica Conference (pp. 54). Regensburg, Germany. https://doi.org/10.3384/ecp19157533

Arnaud, S. E., Calisti, M., & Polydoros, A. (2025). Data-driven greenhouse climate regulation in lettuce cultivation using BiLSTM and GRU predictive control. Computers and Electronics in Agriculture, 215, 108417. https://doi.org/10.1016/j.compag.2025.108417

Chen, S., Liu, A., Tang, F., Hou, P., Lu, Y., & Yuan, P. (2025). A Review of Environmental Control Strategies and Models for Modern Agricultural Greenhouses. Sensors, 25(5), 1388. https://doi. org/10.3390/s25051388

Chimankare, R. V. (2023). A review study on the design and control of optimised greenhouse environments. Renewable Agriculture Reviews, 18(4), 221–235.

Despommier, D. D. (2011). The vertical farm: Feeding the world in the 21st century. First Picador ed., St. Martin’s Press.

Diaz, G. (2023). Design and evaluation of a greenhouse interface for user-friendly climate monitoring and control. International Journal of Smart Agriculture, 9(3), 102–115.

Kalantari, F., Tahir, O. M., Joni, R. A., & Fatemi, E. (2017). Vertical farming: Creating an accessible and sustainable future. A review. Journal of Landscape Ecology, 10(1), 35–60.

Kittas, C., Katsoulas, N., Bartzanas, T., & Bakker, S. (2013). Greenhouse climate control and energy use. Food and Agriculture Organization of the United Nations.

Labidi, A., Chouchaine, A., & Marni, A. (2021). Intelligent climate control system inside a greenhouse. International Journal of Advanced Computer Science and Applications, 12(2). https://doi. org/10.14569/IJACSA.2021.0120229

Linker, R., Kacira, M., & Arbel, A. (2011). Robust climate control of a greenhouse equipped with variable-pressure fogging system and variable-speed extracting fans. Control Engineering Practice, 19(6), 636–648. https://doi.org/10.1016/j.conengprac.2011.02.003

López-Cruz, I.L., Ramírez-Arias, A., Rojano-Aguilar, A. and Ruiz-García, A. (2008). Modeling of greenhouse climate using evolutionary algorithms. Acta Hortic. 801, 401-408. https://doi. org/10.17660/ActaHortic.2008.801.42

Mahmood, F., Govindan, R., Bermak, A., Yang, D., & Al-Ansari, T. (2023). Data-driven robust model predictive control for greenhouse temperature control and energy utilisation assessment. Applied Energy, 343, Article 121190. https://doi.org/10.1016/j.apenergy.2023.121190

Mallick, S., Airaldi, F., Dabiri, A., Sun, C., & De Schutter, B. (2024). Reinforcement Learning- based Model Predictive Control for Greenhouse Climate Control. arXiv preprint. arXiv:2409.12789 arxiv.org

Matyakubova, P. M., Ismatullayev, P. R., & Sharipov, Sh. M. (2023). O‘lchash usullari va vositalari (fizik-kimyoviy o‘lchashlar bir qismi) [Methods and tools of measurement (part of physico-chemical measurements)]. Tаshkent.

Morales, M. (2018). Deep reinforcement learning. Manning Publ.

Morcego, B., López, G., & Colomer, M. (2023). Reinforcement learning versus model predictive control on greenhouse climate control. Control Engineering Practice, 138, 105536. https://doi. org/10.1016/j.conengprac.2023.105536

Naagarajan, R. A., Sathyanarayanan, K. K., Bauer, N., & Streif, S. (2025). Automated analysis and textual summarization of time-varying references in advanced greenhouse climate control. Frontiers in Agronomy, 7. https://doi.org/10.3389/fagro.2025.1536998

Platero-Horcajadas, M., Pardo-Pina, S., Cámara-Zapata, J.-M., Brenes-Carranza, J.-A., & Ferrández-Pastor, F.-J. (2024). Enhancing greenhouse ef�iciency: Integrating IoT and reinforcement learning for optimized climate control. Sensors, 24(24), 8109. https://doi.org/10.3390/s24248109 MDPI

Puglisi, G., Vox, G., Schettini, E., Morosinotto, G., & Campiotti, C. (2017). Climate control inside a greenhouse by means of a solar cooling system. In International Symposium on New Technologies for Environment Control, Energy-Saving and Crop Production in Greenhouse and Plant 1227. Beijing, China.

Sen, N. (2018). Automatic Climate Control of a Greenhouse: a Review. ADBU Journal of Electrical and Electronics Engineering (AJEEE).

Singh, N. (2024). IoT-based greenhouse technologies for enhanced crop monitoring and climate control. Journal of Agricultural IoT Studies, 5(2), 45–56.

Tuttelberg, K., Kilter, J., & Uhlen, K. (2017). Comparison of system identification methods applied to analysis of inter-area modes. In Proceedings of the International Conference on Power Systems Transients (IPST2017). Seoul, South Korea.

Urakov, E. E., Musayeva, Z. D., & Rashidov, T. E. (2023). The importance of metrology and standardization in greenhouse climate control. Science and Innovation, Series D, 2(1). https:// scientists.uz/view?id=3604

Van Mourik, S., van ’t Ooster, B., & Vellekoop, M. (2023). Plant performance in precision horticulture: Optimal climate control under stochastic uncertainty. Biosystems Engineering, 232, 34– 48. https://doi.org/10.1016/j.biosystemseng.2023.05.010

Yassin, I. M., Taib, M. N., & Adnan, R. (2013). Recent Advancements & Methodologies in System Identification: A Review. Scientific Research Journal (SCIRJ), 1(1), 14-33. https://www.scirj.org/ papers-0813/scirj-august-2013-edition-03.pdf

Yusuf, A. G. (2025). Optimizing greenhouse microclimate for plant pathology. Plant Pathology and Environment, 12(1), 77–89.

public

SLIB.uz — O'zbekiston ilmiy jurnallari va maqolalar yagona tizimda ilmiy nashirlarni bir joyda ko'rish, izlash va ulardan foydalanish imkonini beruvchi zamonaviy platforma.

Ijtimoiy tarmoqlarda
instagramtelegramyoutubefacebook

Bog'lanish uchun

Manzil:Chilonzor tumani Qatortol ko'chasi 60B

Tel:+998(55)511-44-00

Savol-javob va takliflar uchun

© 2026 Barcha huquqlar himoyalangan.