基于ELM深度学习算法的人工林生态管理系统开发

Zhe Wang
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摘要

人工林在维护地球生态平衡、维护陆地生态系统整体功能、促进经济社会与生态建设协调发展等方面具有中心和杠杆作用。为了加强人工林的生态管理,提高林区的生态水平,在J2EE平台上,以C/S框架为基本结构,采用业务模型-用户界面控制器的编程模式。该系统由基于极限学习机和深度学习算法的人工林生态功能价值评价模块、生态功能价值主成分综合分析模块和人工林需求预测模块组成,在windows系统、oracle 15G及以上数据库软件支持下运行。通过预测模块对影响人工林生态功能的指标和因素进行评价和分析,并给出最终的经营决策。结果表明:植物密度显著影响植物生物量、有机碳储量、水分含量和养分积累,4种生态功能综合评价指标分别从32.69、31.84、33.71和35.46提高到86.18、89.46、89.83和88.76;虽然该系统对柠檬条植物、草本植物、地表凋落物和土壤的影响程度不同,但仍具有良好的可行性、有效性和实用性,可以辅助人工人工林的科学生态管理。
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Development of ecological management system for planted forest based on ELM deep learning algorithm
Plantations play a central and lever role in maintaining the ecological balance of the earth, maintaining the overall function of the terrestrial ecosystem, and promoting the coordinated development of economic society and ecological construction. In order to strengthen the ecological management of plantation forests and improve the ecological level of forest region, the C/S framework is taken as the basic structure, and the programming mode of business model-user interface controller is used, on J2EE platform. The ecological management system of a planted forest is constructed by the evaluation module, the principal component comprehensive analysis module of ecological function value and the demand prediction module of planted forest based on extreme learning machine and deep learning algorithm, and runs under the support of windows system, oracle 15G and above database software. The indexes and factors affecting the ecological function of plantation forests were evaluated and analyzed, and the final management decision was given by the prediction module. The results showed that the plant density significantly affected plant biomass, organic carbon storage, water content and nutrient accumulation, and the comprehensive evaluation indexes of four ecological functions increased from 32.69, 31.84, 33.71 and 35.46 to 86.18, 89.46, 89.83 and 88.76, respectively. Although the degree of influence of the system on lemon strip plants, herbaceous plants, surface litter and soil varies, it still has good feasibility, effectiveness and practicality, and can assist the scientific ecological management of artificial plantation forests.
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