Assessing the Relationship between Forest Proportion, Soil Moisture Index and Net Primary Productivity in Pa Sak Ngam, Chiang Mai Province, Thailand

Q4 Social Sciences International Journal of Geoinformatics Pub Date : 2023-02-28 DOI:10.52939/ijg.v19i2.2563
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Abstract

The objective of this study was to determine the relationship between the proportion of forest area, soil moisture index, and net primary productivity in the Pa Sak Ngam, Luang Nuea Subdistrict, Doi Saket District Chiang Mai, Thailand. The investigation was conducted during dry season in 2009 and 2019 utilizing systematic sampling inside a 500 m × 500 m image grid to measure these factors. Landsat 5 TM and Landsat 8 OLI/TIRS satellite images were classified using the Random Forest to obtain the proportion of forest area. Soil moisture was calculated using the soil moisture index obtained from land surface temperature and the normalized difference vegetation index. The Physiological Processes Predicting Growth (3-PGs) model was used to compute net primary productivity. In 2009, the analysis revealed a moderately strong positive correlation between the proportion of forest area and both soil moisture and net primary productivity. In contrast, in 2019, a weak positive association was found between low forest cover percentage and both soil moisture and net primary productivity. A comparison of the results from the two time periods indicated that the association between the three variables was stronger in 2009 than in 2019. This may be attributed to the increase in average forest cover from 85.583% to 92.349% over the two time periods. Effective management of forest restoration and expansion can enhance the water cycle and increase the flow of energy and productivity.
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泰国清迈省Pa Sak Ngam森林比例、土壤水分指数和净初级生产力的关系评估
本研究的目的是确定泰国清迈Doi Saket区Luang Nuea街道Pa Sak Ngam的森林面积比例、土壤水分指数和净初级生产力之间的关系。该调查是在2009年和2019年旱季进行的,利用500米×500米图像网格内的系统采样来测量这些因素。使用随机森林对Landsat 5 TM和Landsat 8 OLI/TIRS卫星图像进行分类,以获得森林面积的比例。利用地表温度获得的土壤水分指数和归一化差异植被指数计算土壤水分。生理过程预测生长(3-PG)模型用于计算净初级生产力。2009年,分析显示,森林面积比例与土壤湿度和净初级生产力之间存在中等强度的正相关关系。相比之下,2019年,低森林覆盖率与土壤湿度和净初级生产力之间存在微弱的正相关。对这两个时期的结果进行比较表明,2009年这三个变量之间的关联比2019年更强。这可能是由于在这两个时期内,平均森林覆盖率从85.583%增加到92.349%。森林恢复和扩张的有效管理可以加强水循环,增加能源和生产力的流动。
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来源期刊
International Journal of Geoinformatics
International Journal of Geoinformatics Social Sciences-Geography, Planning and Development
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