S. Sivaranjani , Mriganka Shekhar Sarkar , Vijender Pal Panwar , Rajiv Pandey , Arun Pratap Mishra , Upaka Rathnayake
{"title":"模拟土壤呼吸:下喜马拉雅松叶林和阔叶林的季节变化及其驱动因素","authors":"S. Sivaranjani , Mriganka Shekhar Sarkar , Vijender Pal Panwar , Rajiv Pandey , Arun Pratap Mishra , Upaka Rathnayake","doi":"10.1016/j.tfp.2025.100804","DOIUrl":null,"url":null,"abstract":"<div><div>Soil respiration (Rs) is the largest source of carbon dioxide emissions from terrestrial ecosystems. While numerous studies have examined its environmental controls, significant knowledge gaps remain regarding the complex interactions between biotic and abiotic factors regulating Rs. These uncertainties hinder the accuracy of model predictions, limiting our ability to assess ecosystem carbon dynamics under changing environmental conditions. This study hypothesizes that, soil properties, microclimatic and environmental variables influence <em>Rs</em>, with variations across forest types. To explore this, the study aims to quantify <em>Rs</em> in two distinct forests and predict its relationship with environmental, microclimatic, and soil characteristics in <em>S. robusta</em> and <em>P. roxburghii</em> forests in the lower Indian Himalayas. Initially, we collected field data containing soil respiration, soil properties and environmental factors. The ANOVA analysis revealed that <em>Rs</em> rates across different seasons in Sal (<em>F</em> = 100.9, <em>P</em> < 0.05) and Chir-Pine forests (<em>F</em> = 49.89, <em>P</em> < 0.05) were found significantly different. Subsequently, we employed machine learning techniques with various training strategies to improve model accuracy and analyze the relationship between soil respiration and environmental factors. The RF machine learning algorithm was applied to estimate the relationship between Rs and other properties. The results showed that Random Forest model in Sal Forest achieved the lowest RMSE (2.11) and MAE (1.38), suggesting it had the best predictive performance than the others. The most influential parameter influencing Rs rates in Sal was Soil moisture, followed by Soil Temperature and Rainfall. Similarly, Chir-Pine Forest also performed best in the RF model with the lowest RMSE (1.455) and MAE (1.011), as well as the highest R<sup>2</sup> value (0.363). In Chir-Pine, the most influential parameter was RF followed by ST and SM. The present study concluded that combining forest-specific properties with climatic parameters may provide more robust predictions of <em>Rs</em>. The findings will enable the precise future accounting of temporal and spatial changes in carbon pools and atmospheric CO<sub>2</sub> concentrations and their evolving trajectories concerning species composition in forests under climate change.</div></div>","PeriodicalId":36104,"journal":{"name":"Trees, Forests and People","volume":"20 ","pages":"Article 100804"},"PeriodicalIF":2.7000,"publicationDate":"2025-02-18","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Modeling soil respiration: Seasonal variability and drivers in pine and broad-leaved forests of the lower Himalayas\",\"authors\":\"S. Sivaranjani , Mriganka Shekhar Sarkar , Vijender Pal Panwar , Rajiv Pandey , Arun Pratap Mishra , Upaka Rathnayake\",\"doi\":\"10.1016/j.tfp.2025.100804\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><div>Soil respiration (Rs) is the largest source of carbon dioxide emissions from terrestrial ecosystems. While numerous studies have examined its environmental controls, significant knowledge gaps remain regarding the complex interactions between biotic and abiotic factors regulating Rs. These uncertainties hinder the accuracy of model predictions, limiting our ability to assess ecosystem carbon dynamics under changing environmental conditions. This study hypothesizes that, soil properties, microclimatic and environmental variables influence <em>Rs</em>, with variations across forest types. To explore this, the study aims to quantify <em>Rs</em> in two distinct forests and predict its relationship with environmental, microclimatic, and soil characteristics in <em>S. robusta</em> and <em>P. roxburghii</em> forests in the lower Indian Himalayas. Initially, we collected field data containing soil respiration, soil properties and environmental factors. The ANOVA analysis revealed that <em>Rs</em> rates across different seasons in Sal (<em>F</em> = 100.9, <em>P</em> < 0.05) and Chir-Pine forests (<em>F</em> = 49.89, <em>P</em> < 0.05) were found significantly different. Subsequently, we employed machine learning techniques with various training strategies to improve model accuracy and analyze the relationship between soil respiration and environmental factors. The RF machine learning algorithm was applied to estimate the relationship between Rs and other properties. The results showed that Random Forest model in Sal Forest achieved the lowest RMSE (2.11) and MAE (1.38), suggesting it had the best predictive performance than the others. The most influential parameter influencing Rs rates in Sal was Soil moisture, followed by Soil Temperature and Rainfall. Similarly, Chir-Pine Forest also performed best in the RF model with the lowest RMSE (1.455) and MAE (1.011), as well as the highest R<sup>2</sup> value (0.363). In Chir-Pine, the most influential parameter was RF followed by ST and SM. The present study concluded that combining forest-specific properties with climatic parameters may provide more robust predictions of <em>Rs</em>. 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引用次数: 0
摘要
土壤呼吸(Rs)是陆地生态系统二氧化碳排放的最大来源。虽然许多研究已经检查了其环境控制,但关于调节Rs的生物和非生物因素之间复杂的相互作用,仍然存在重大的知识空白。这些不确定性阻碍了模型预测的准确性,限制了我们在变化的环境条件下评估生态系统碳动态的能力。本研究假设土壤性质、小气候和环境变量影响Rs,且在不同的森林类型中存在差异。为了探讨这一问题,本研究旨在量化两种不同森林的Rs,并预测其与印度喜马拉雅山脉下的罗布斯塔和罗克斯堡林的环境、小气候和土壤特征的关系。最初,我们收集了包含土壤呼吸、土壤性质和环境因素的现场数据。方差分析显示萨尔不同季节Rs发生率(F = 100.9, P <;0.05)和青松林(F = 49.89, P <;0.05),差异有统计学意义。随后,我们采用机器学习技术和各种训练策略来提高模型精度,并分析土壤呼吸与环境因子的关系。应用射频机器学习算法估计Rs与其他属性之间的关系。结果表明,Sal Forest中的Random Forest模型的RMSE(2.11)和MAE(1.38)最低,具有最佳的预测性能。影响盐碱地Rs率最大的参数是土壤湿度,其次是土壤温度和降雨量。同样,青松林在RF模型中的表现也最好,RMSE最低(1.455),MAE最低(1.011),R2最高(0.363)。在杉木中,影响最大的参数是RF,其次是ST和SM。本研究的结论是,将森林特性与气候参数相结合可以提供更可靠的Rs预测。这些发现将使未来能够精确地计算气候变化下森林物种组成的碳库和大气CO2浓度的时空变化及其演变轨迹。
Modeling soil respiration: Seasonal variability and drivers in pine and broad-leaved forests of the lower Himalayas
Soil respiration (Rs) is the largest source of carbon dioxide emissions from terrestrial ecosystems. While numerous studies have examined its environmental controls, significant knowledge gaps remain regarding the complex interactions between biotic and abiotic factors regulating Rs. These uncertainties hinder the accuracy of model predictions, limiting our ability to assess ecosystem carbon dynamics under changing environmental conditions. This study hypothesizes that, soil properties, microclimatic and environmental variables influence Rs, with variations across forest types. To explore this, the study aims to quantify Rs in two distinct forests and predict its relationship with environmental, microclimatic, and soil characteristics in S. robusta and P. roxburghii forests in the lower Indian Himalayas. Initially, we collected field data containing soil respiration, soil properties and environmental factors. The ANOVA analysis revealed that Rs rates across different seasons in Sal (F = 100.9, P < 0.05) and Chir-Pine forests (F = 49.89, P < 0.05) were found significantly different. Subsequently, we employed machine learning techniques with various training strategies to improve model accuracy and analyze the relationship between soil respiration and environmental factors. The RF machine learning algorithm was applied to estimate the relationship between Rs and other properties. The results showed that Random Forest model in Sal Forest achieved the lowest RMSE (2.11) and MAE (1.38), suggesting it had the best predictive performance than the others. The most influential parameter influencing Rs rates in Sal was Soil moisture, followed by Soil Temperature and Rainfall. Similarly, Chir-Pine Forest also performed best in the RF model with the lowest RMSE (1.455) and MAE (1.011), as well as the highest R2 value (0.363). In Chir-Pine, the most influential parameter was RF followed by ST and SM. The present study concluded that combining forest-specific properties with climatic parameters may provide more robust predictions of Rs. The findings will enable the precise future accounting of temporal and spatial changes in carbon pools and atmospheric CO2 concentrations and their evolving trajectories concerning species composition in forests under climate change.