Abstract
In China, developing intelligent cities has become an irresistible trend of development in cities at present. Intelligent cities have been constructed in various regions. With the continuous implementation of intelligent cities, the evaluation index system has been gradually improved. Based on this, intelligent city evaluation algorithm based on analytic hierarchy process is studied. The evaluation model was firstly constructed, followed by the analysis of the analytic hierarchy process, and the analytic hierarchy process was applied to the evaluation of intelligent cities. Then, an empirical study of the algorithm was conducted in Fangshan District of Beijing as an example to explain the application of the algorithm.




Similar content being viewed by others
References
Zhou Z, Liu F, Li Z (2016) Bilateral electricity trade between intelligent grids and green datacenters: pricing models and performance evaluation. IEEE J Sel Areas Commun 34(12):3993–4007
Barzegar R, Moghaddam AA, Baghban H (2016) A supervised committee machine artificial intelligent for improving DRASTIC method to assess groundwater contamination risk: a case study from Tabriz plain aquifer, Iran. Stoch Environ Res Risk Assess 30(3):883–899
Mamun MAA, Hannan MA, Hussain A et al (2016) Theoretical model and implementation of a real time intelligent bin status monitoring system using rule based decision algorithms. Expert Syst Appl 48(9):76–88
Liu C, Liu S, Zhang W et al (2016) The performance evaluation of hybrid localization algorithm in wireless sensor networks. Mob Netw Appl 21(6):994–1001
Cheng R, Liu W, Jin Q et al (2017) Reliability evaluation in composite power system based on estimation of distribution algorithm and intelligent storage. Proc Chin Soc Electr Eng 37(19):5541–5548
Wang J, Kang J (2017) Application of a new hybrid intelligent algorithm in the evaluation of sustainable development of fossil energy. Rev Fac Ing 32(5):319–325
Danijela T, Đorđević A, Erić M et al (2017) Two-step model for performance evaluation and improvement of new service development process based on fuzzy logics and genetic algorithm. J Intell Fuzzy Syst 33(6):3959–3970
Caird S (2018) City approaches to intelligent city evaluation and reporting: case studies in the United Kingdom. Urban Res Pract 11(2):1–21
Pahlavani A (2017) A hybrid algorithm of improved case-based reasoning and multi-attribute decision making in fuzzy environment for investment loan evaluation. Int J Inf Decis Sci 2(1):17–49
Hu M, Hu Z, Deng A et al (2016) Hybrid algorithm for reliability evaluation of distribution network based on element hierarchy and power accessibility. Power Syst Prot Control 44(8):22–29
Rababah OM, Hwaitat AK, Qudah A et al (2016) Hybrid algorithm to evaluate e-business website comments. Commun Netw 8(3):137–143
Shahrezaei IH, Kazerooni M, Fallah M (2016) A complex target terrain SAR raw data generation and evaluation based on inversed equalized hybrid-domain algorithm processing. Waves Random Media 27(1):47–66
Rikhi R, Sachdeva R (2017) Performance evaluation of churn customer behavior based on hybrid algorithm. Int J Comput Appl 159(6):14–19
Araujo BT, Jr JVB, Bortoni EDC et al (2018) Synchronous machine parameters evaluation with a hybrid particle swarm optimization algorithm. Electr Power Compon Syst 45(2):1–10
Sivakumar S, Venkatesan R (2016) Performance evaluation of hybrid evolutionary algorithms in minimizing localization error for wireless sensor networks. J Sci Ind Res 75(5):289–295
Author information
Authors and Affiliations
Corresponding author
Rights and permissions
About this article
Cite this article
Duan, K. Research on optimization and application of evaluation algorithm for intelligent city. J Supercomput 76, 3427–3439 (2020). https://doi.org/10.1007/s11227-018-2609-x
Published:
Issue Date:
DOI: https://doi.org/10.1007/s11227-018-2609-x