Tan Fangqi, Cheng Yuning, Yuan Yangyang, Wang Xueyuan, Fan Boqing
School of Architecture, Southeast University, Nanjing, 210096, China.
Heliyon. 2024 Apr 5;10(7):e29295. doi: 10.1016/j.heliyon.2024.e29295. eCollection 2024 Apr 15.
It is crucial to employ scientifically sound models for assessing the quality of the ecological environment and revealing the strengths and weaknesses of ecosystems. This process is vital for identifying regional ecological and environmental issues and devising relevant protective measures. Among the widely acknowledged models for evaluating ecological quality, the ecological index (EI) and remote sensing ecological index (RSEI) stand out; however, there is a notable gap in the literature discussing their differences, characteristics, and reasons for selecting either model. In this study, we focused on Fangshan District, Beijing, China, to examine the differences between the two models from 2017 to 2021. We summarized the variations in evaluation indices, importance, quantitative methods, and data acquisition times, proposing application scenarios for both models. The results indicate that the ecological environment quality in Fangshan District, Beijing, remained favorable from 2017 to 2021. There was a discernible trend of initially declining quality followed by subsequent improvement. The variation in the calculation results is evident in the overall correlation between the RSEI and EI. Particularly noteworthy is the significantly smaller correlation between EI and the RSEI in 2021 than in the other two years. This discrepancy is attributed to shifts in the contribution of the evaluation indices within the RSEI model. The use of diverse quantitative methods for evaluating indicators has resulted in several variations. Notably, the evaluation outcomes of the EI model exhibit a stronger correlation with land cover types. This correlation contributes to a more pronounced fluctuation in RSEI levels from 2017 to 2021, with the EI model's evaluation results in 2019 notably surpassing those of the RSEI model. Ultimately, the most prominent disparities lie in the calculation results for water areas and construction land. The substantial difference in water areas is attributed to the distinct importance assigned to evaluation indicators between the two models. Moreover, the notable difference in construction land arises from the use of different quantification methods for evaluation indicators. In general, the EI model has suggested to be more comprehensive and effectively captures the annual comprehensive status of the ecological environment and the multiyear change characteristics of the administrative region. On the other hand, RSEI models exhibit greater flexibility and ease of implementation, independent of spatial and temporal scales. These findings contribute to a clearer understanding of the models' advantages and limitations, offering guidance for decision makers and valuable insights for the improvement and development of ecological environmental quality evaluation models.
采用科学合理的模型来评估生态环境质量并揭示生态系统的优势与劣势至关重要。这一过程对于识别区域生态环境问题并制定相关保护措施至关重要。在广泛认可的生态质量评估模型中,生态指数(EI)和遥感生态指数(RSEI)较为突出;然而,在讨论它们的差异、特征以及选择任一模型的原因方面,文献中存在显著差距。在本研究中,我们聚焦于中国北京房山区,考察2017年至2021年这两种模型之间的差异。我们总结了评估指标、重要性、定量方法以及数据获取时间的变化情况,提出了两种模型的应用场景。结果表明,北京房山区2017年至2021年的生态环境质量总体良好。呈现出先下降后改善的明显趋势。RSEI和EI的总体相关性体现了计算结果的变化。特别值得注意的是,2021年EI与RSEI之间的相关性明显小于其他两年。这种差异归因于RSEI模型中评估指标贡献的变化。评估指标采用多种定量方法导致了一些差异。值得注意的是,EI模型的评估结果与土地覆盖类型的相关性更强。这种相关性导致2017年至2021年RSEI水平波动更为明显,2019年EI模型的评估结果显著超过RSEI模型。最终,最显著的差异在于水域和建设用地的计算结果。水域的巨大差异归因于两种模型对评估指标赋予的不同重要性。此外,建设用地的显著差异源于评估指标采用了不同的量化方法。总体而言,EI模型被认为更全面,能有效捕捉生态环境的年度综合状况以及行政区的多年变化特征。另一方面,RSEI模型表现出更大的灵活性和实施便利性,不受空间和时间尺度的限制。这些发现有助于更清晰地理解模型的优势与局限性,为决策者提供指导,并为生态环境质量评估模型的改进与发展提供有价值的见解。