[go: up one dir, main page]
More Web Proxy on the site http://driver.im/ skip to main content
research-article

Enhancement in Smart Operation of Greenhouse Environment Using Intelligent Biomimetic Control Framework

Published: 24 February 2024 Publication History

Abstract

The greenhouse is a complex nonlinear system, which provides a suitable growing environment for plants. Realizing a comprehensive control for such systems is more challenging in the premise of the presence of model parameter uncertainties and variable time delay. This work presents, develops, and tests the methodology entrenched from the computational inspiration of the biologic immune concept. Mostly, in contention to the widely used classical approach of greenhouse control, an essential facet of the bioinspired algorithm is integrated that synergizes its strength. In this work, the study considers proportional integral and pseudo-derivative-feedback controllers and the artificial immune feature supplements it for the proposal of a new unifying control framework. The non-intelligent techniques are more classical, whereas intelligent techniques involving resistant feature is still relatively new to the control arena. The main distinguishing feature is the superficial resemblance to the conventional controller, but it is inherently more flexible and sophisticated and can exploit the power of heuristics. To deal with the system realistically and to ensure robustness, the Kharitonov theorem is used to synthesize the controller by elucidating the relationship between coefficient perturbations, set of test eight specially constructed vortex polynomials and its stability. Further, Hardware in Loop simulation is performed to verify the performance near physical operating conditions and the results validate the efficacy of the proposed controller frameworks with improvement in dynamic performance and robustness.

References

[1]
Albright LD, Gates RS, Arvanitis KG, and Drysdal AE Environmental control for plants on earth and in space IEEE Control Syst Mag 2001 5 21 28-47
[2]
Azuaje F Artificial immune systems: a new computational intelligence approach Neural Netw 2003
[3]
Bennis N, Duplaix J, Enéa G, Haloua M, and Youlal H Greenhouse climate modelling and robust control Comput Electron Agric 2008 61 2 96-107
[4]
Van Beveren PJM, Bontsema J, van Straten G, and van Henten EJ Optimal control of greenhouse climate using minimal energy and grower defined bounds Appl Energy 2015 159 509-519
[5]
Blasco X, Martinez M, Herrero JM, Ramos C, and Sanchis J Model-based predictive control of greenhouse climate for reducing energy and water consumption Comput Electron Agric 2007 55 1 49-70
[6]
Bot GPA Backer, Bot JC, Gpa A, Challa H, and Van de Braak NJ Greenhouse climate control Greenhouse climate control: an integrated approach 1995 Wageningen Wageningen Pers 211-247
[7]
Castañeda Miranda R, Ventura Ramos E, del RocíoPeniche Vera R, and Herrera-Ruiz G Fuzzy greenhouse climate control system based on a field programmable gate array Biosyst Eng 2006 94 2 165-177
[8]
Chen L, Du S, Xu D, He Y, and Liang M Sliding mode control based on disturbance observer for greenhouse climate systems Math Probl Eng 2008 2018 1-8
[9]
Fleming PJ and Purshouse RJ Genetic algorithms in control systems engineering IFAC Proc Vol 1999 26 2 605-612
[10]
González-Vidal A, Mendoza-Bernal J, Ramallo AP, Zamora MÁ, Martínez V, and Skarmeta AF Smart operation of climatic systems in a greenhouse Agriculture 2022 12 10 1729
[11]
Gurban E H, Andreescu G D. Comparison study of PID controller tuning for greenhouse climate with feedback-feedforward linearization and decoupling. Proc. of 16th international conference on system theory, control and computing (ICSTCC). 2012; 1–6.
[12]
Gustavo C, Marco H, Ramon J, Hanna A, and Oscar C A practical hybrid control approach for a greenhouse microclimate: a hardware-in-the-loop implementation Agriculture 2022 12 11 1916-1916
[13]
Herrero J M, Blasco X, Martinez M, Sanchis J (2008) Multiobjective tuning of robust PID controllers using evolutionary algorithms. Proc of conference on applications of evolutionary computing 515–524.
[14]
Huang YJ and Wang YJ Robust PID tuning strategy for uncertain plants based on the Kharitonov theorem ISA Trans 2000 39 4 419-431
[15]
Jaen Cuellar AY, de Romero Troncoso RJ, Morales Velazquez L, and Osornio-Rios RA PID controller tuning optimization with genetic algorithms in servo systems Inte J Adv Robot Syst 2013 10 9 1-14
[16]
Jerne NK Towards a network theory of the immune system Ann Immunol (Paris) 1974 125 1–2 373-389
[17]
Kolokotsa D, Saridakis G, Dalamagkidis K, Dolianitis S, and Kaliakatsos I Development of an intelligent indoor environment and energy management system for greenhouses Energy Conversat Manag 2010 51 1 155-168
[18]
Küppers R (2010) Overview of the immune system. The lymphoid neoplasms.
[19]
Lin G, Liu L (2010) Tuning PID controller using adaptive genetic algorithms. 2010 5th International conference on computer science and education 519–523.
[20]
Boughamsa M and Ramdani M Adaptive fuzzy control strategy for greenhouse micro-climate Int J Autom Control 2018 12 1 108-125
[21]
Occhipinti L, Nunnari G (1996) Synthesis of a greenhouse climate controller using Al-based techniques. Proc. IEEE Int. Conf. MELECON 230–233.
[22]
Pasgianos GD, Syrcos G, Arvanitis KG, and Sigrimis NA Pseudo-derivative feedback-based identification of unstable processes with application to bioreactors Comput Electron Agric 2003 40 1–3 5-25
[23]
Phelan RM Automatic control systems 1997 Cornell University Press
[24]
Preeth SKSL, Dhanalakshmi R, and Kumar R An adaptive fuzzy rule based energy efficient clustering and immune-inspired routing protocol for WSN-assisted IoT system J Ambient Intell Humaniz Comput 2018
[25]
Revathi S, Radhakrishnan TK, and Sivakumaran N Climate control in greenhouse using intelligent control algorithms Am Control Conf 2017 2017 887-892
[26]
Seginer I, Boulard T, and Bailey BJ Neural network models of the greenhouse climate J Agric Eng Res 1994 59 3 203-216
[27]
Seshagiri RA and Chidambaram M PI/PID controllers design for integrating and unstable systems Adv Ind Control 2012
[28]
Setiawan A, Albright LD, and Phelan RM Application of pseudo-derivative-feedback algorithm in greenhouse air temperature control Comput Electron Agric 2000 26 3 283-302
[29]
Sigrimis N, Arvanitis KG, Ferentinos KP, and Anastasiou A An intelligent noninteracting technique for climate control of greenhouses IFAC Proc Vol 2002 35 1 323-328
[30]
Stanghellini C and Van Meurs WT Environmental control of greenhouse crop transpiration J Agric Eng Res 1992 51 297-311
[31]
Tantau H J (1985) Greenhouse climate control using mathematical models. Acta Hortic 449–460.
[32]
Karanisa T, Achour Y, Ouammi A, and Sayadi S Smart greenhouses as the path towards precision agriculture in the food-energy and water nexus: case study of Qatar Environ Syst Decis 2022 42 4 521-546
[33]
Valentin J and van Zeeland J Adaptive split-range control of a glasshouse heating system Acta Hortic 1980 106 109-116
[34]
Wang J, Zhou J, and GuLi CRMPCR Manage system for internet of things of greenhouse based on GWT Inf Process Agric 2018 5 2 269-278
[35]
Wang YJ Determination of all feasible robust PID controllers for open-loop unstable plus time delay processes with gain margin and phase margin specifications ISA Trans 2014 53 2 628-646
[36]
Yang Y and Wang L Development of multi-agent system for building energy and comfort management based on occupant behaviors Energy Build 2013 56 1-7
[37]
Zalzala AMS, Fleming PJ (1999) Genetic algorithms in engineering systems. IEE Control Ser UK.

Recommendations

Comments

Please enable JavaScript to view thecomments powered by Disqus.

Information & Contributors

Information

Published In

cover image SN Computer Science
SN Computer Science  Volume 5, Issue 3
Mar 2024
750 pages

Publisher

Springer-Verlag

Berlin, Heidelberg

Publication History

Published: 24 February 2024
Accepted: 07 January 2024
Received: 01 February 2023

Author Tags

  1. Greenhouse environment
  2. Complex Kharitonov polynomial
  3. Artificial immune feedback
  4. Hardware in loop simulation

Qualifiers

  • Research-article

Contributors

Other Metrics

Bibliometrics & Citations

Bibliometrics

Article Metrics

  • 0
    Total Citations
  • 0
    Total Downloads
  • Downloads (Last 12 months)0
  • Downloads (Last 6 weeks)0
Reflects downloads up to 21 Dec 2024

Other Metrics

Citations

View Options

View options

Media

Figures

Other

Tables

Share

Share

Share this Publication link

Share on social media