Welcome to Scholar Publishing Group

Nature Environmental Protection, 2020, 1(3); doi: 10.38007/NEP.2020.010302.

Ecological Architectural Design in Nature Conservation Environment Relying on Support Vector Machines

Author(s)

Hafsa Muzammal

Corresponding Author:
Hafsa Muzammal
Affiliation(s)

Faculty of Geotechnical Engineering, University of Zagreb, Hallerova Aleja 7, 42000 Varaždin, Croatia

Abstract

China is a large construction country, and the rapid growth of the construction industry is accompanied by high consumption and high emissions. The adoption of green building technology to effectively reduce building energy consumption and carbon emissions is an important measure to promote the transformation and upgrading of the construction industry and sustainable development, thus putting forward the concept of ecological architecture, and this paper studies ecological architecture in the hope of comprehensively promoting sustainable development of green and low-carbon buildings, prompting people to start reflecting on whether it is possible to address the demand for natural resources in architecture from the root without violating the ideal life. In this paper, we propose an ecological construction design scheme based on support vector machines for rural ecological buildings as an example, analyze the use of renewable energy in rural areas, and the impact of ecological buildings on rural environmental management costs and emission reductions. The results show that compared to traditional buildings, ecological buildings effectively reduce pollutant emissions and environmental management costs, and have high ecological benefits. Therefore, the use of ecological energy-saving technologies in rural areas can maintain the stability of the ecological environment.

Keywords

Support Vector Machine, Ecological Building, Environmental Management, Ecological Benefits

Cite This Paper

Hafsa Muzammal. Ecological Architectural Design in Nature Conservation Environment Relying on Support Vector Machines. Nature Environmental Protection (2020), Vol. 1, Issue 3: 10-18. https://doi.org/10.38007/NEP.2020.010302.

References

[1] Veronica Picialli, Marco Sciandrone. Nonlinear Optimization and Support Vector Machines. Ann. Oper. Res. (2020) 314(1): 15-47. 

[2] Abdullah Jafari Chashmi, Mehdi Chehel Amirani. An Automatic ECG Arrhythmia Diagnosis System Using Support Vector Machines Optimised with GOA and Entropy-Based Feature Selection Procedure. Int. J. Medical Eng. Informatics. (2020) 14(1): 52-62. 

[3] Eslam Eldeeb, Mohammad Shehab, Hirley Alves. A Learning-Based Fast Uplink Grant for Massive IoT via Support Vector Machines and Long Short-Term Memory. IEEE Internet Things J. (2020) 9(5): 3889-3898. 

[4] Haimonti Dutta. A Consensus Algorithm for Linear Support Vector Machines. Manag. Sci. (2020) 68(5): 3703-3725. 

[5] Mohammad Tanveer, Aruna Tiwari, Rahul Choudhary, M. A. Ganaie. Large-Scale Pinball Twin Support Vector Machines. Mach. Learn. (2020) 111(10): 3525-3548. https://doi.org/10.1007/s1 0994-021-06061-z

[6] Barenya Bikash Hazarika, Deepak Gupta. Density Weighted Twin Support Vector Machines for Binary Class Imbalance Learning. Neural Process. Lett. (2020) 54(2): 1091-1130. 

[7] Mohammed Amine Yagoub, Okba Kazar, Mounir Beggas. A Multi-Agent System Approach Based on Cryptographic Algorithm for Securing Communications and Protecting Stored Data in the Cloud-Computing Environment. Int. J Inf. Comput. Secur. (2019) 11(4/5): 413-430. https://doi. org/10.1504/IJICS.2019.101931

[8] Naglaa Megahed, Ehab Ghoneim. E-learning Ecosystem Metaphor: Building Sustainable Education for the Post-COVID-19 Era. Int. J. Learn. Technol. (2020) 17(2): 133-153. 

[9] Kyung-Eun Hwang, Inhan Kim. Post-COVID-19 Modular Building Review on Problem-Seeking Framework: Function, form, Economy, and Time. J. Comput. Des. Eng. (2020) 9(4): 1369- 1387. https://doi.org/10.1093/jcde/qwac057

[10] Jens Engel, Thomas Schmitt, Tobias Rodemann, Jurgen Adamy. Hierarchical Economic Model Predictive Control Approach for a Building Energy Management System With Scenario-Driven EV Charging. IEEE Trans. Smart Grid. (2020) 13(4): 3082-3093. 

[11] Yu Nakayama, Ryoma Yasunaga, Kazuki Maruta. Banket: Bandwidth Market for Building a Sharing Economy in Mobile Networks. IEEE Commun. Mag. (2020) 59(1): 110-116. https://doi.org/ 10.1109/MCOM.001.2000423

[12] A. D. N. Sarma. The Five Key Components for Building An Operational Business Intelligence Ecosystem. Int. J. Bus. Intell. Data Min. (2020) 19(3): 343-370. 

[13] Farhod Pulatovich Karimov. Building Trust in Ecommerce: An Experimental Study of Social-Cue Design Dimensions. Int. J. Technol. Diffusion. (2020) 12(4): 1-20. https://doi. org/10.4018/IJTD.288526

[14] Anna Akhmedova, Neus Vila-Brunet, Marta Mas Machuca. Building trust in Sharing Economy Platforms: Trust Antecedents and Their Configurations. Internet Res. (2020) 31(4): 1463-1490. https://doi.org/10.1108/INTR-04-2020-0212

[15] Md Shadab Mashuk, James Pinchin, Peer-Olaf Siebers, Terry Moore. Demonstrating the Potential of Indoor Positioning for Monitoring Building Occupancy through Ecologically Valid Trials. J. Locat. Based Serv. (2020) 15(4): 305-327. 

[16] Suat Mercan, Kemal Akkaya. Building Next Generation loT Infrastructure for Enabling M2M Crypto Economy. Open J. Internet Things. (2020) 7(1): 116-124.

[17] Faegheh Moazeni, Javad Khazaei, Arash Asrari. Step Towards Energy-Water Smart Microgrids; Buildings Thermal Energy and Water Demand Management Embedded in Economic Dispatch. IEEE Trans. Smart Grid. (2020) 12(5): 3680-3691. 

[18] Elias G. Carayannis , Manlio Del Giudice, S. Tarba, Pedro Soto-Acosta : Editorial: Building Entrepreneurial Ecosystems. Exploring Ambidexterity in Technology and Engineering Management. IEEE Trans. Engineering Management. (2020) 68(2): 347-349. https://doi.org/10.1109/TEM. 2020.3040613