Hongbo Zhang, Fan Zhang, Lun Luo, Wei Yan, Longhui Zhang, Ziying Li
{"title":"Significant roles of snow and vegetation cover in modulating altitudinal gradients of land surface temperature over Asia high mountains","authors":"Hongbo Zhang, Fan Zhang, Lun Luo, Wei Yan, Longhui Zhang, Ziying Li","doi":"10.1016/j.agrformet.2025.110406","DOIUrl":null,"url":null,"abstract":"The land surface temperature gradient (LSTG) serves as a key indicator of mountain thermal patterns that critically influences hydrological and ecological processes in mountainous regions. However, our understanding of LSTG across the Asian high mountains (AHM) is limited due to sparse observations and unexplored influences of surface characteristic heterogeneity within the grid used for LSTG calculation. Using a novel gridded dataset of monthly LSTG with improved local reliability, this study firstly uncovers significant spatiotemporal variations in AHM LSTGs. Then, employing an explainable machine learning approach coupled with surface energy balance analyses, we investigate the effects of ten environmental factors, including sub-grid gradients of snow, cloud, and vegetation cover. Our results reveal that spatial variations of annual LSTGs are predominantly driven by downward longwave radiation and sub-grid snow cover gradient index (SGI), with SGI dominating during cold months (April‒November) due to the substantial cooling effects of snow at higher elevations. Seasonally, three distinct LSTG patterns are detected: Spring-unimodal (21.0% of the study area), characterized by a single peak in spring; Summer-unimodal (25.2%), with a single peak in summer; and Spring-Autumn-bimodal (34.6%), showing two peaks in spring and autumn. These patterns are closely linked to local snow cover dynamics, with SGI playing a critical role in shaping the Spring-unimodal and Spring-Autumn-bimodal patterns through snow-albedo feedback, while surface net radiation primarily drives the Summer-unimodal pattern. Interannually, most of the significant LSTG trends are decreasing, mainly attributed to accelerated snow cover depletion at higher elevations, while increased vegetation cover gradient is the main contributor to increasing LSTGs. These findings highlight the importance of considering fine-scale surface heterogeneity in understanding mountain climate dynamics. The results also inform future research on integrating LSTG into ecological, agricultural, and hydrological models to better predict climate change impacts on high-mountain ecosystems.","PeriodicalId":50839,"journal":{"name":"Agricultural and Forest Meteorology","volume":"59 1","pages":""},"PeriodicalIF":5.6000,"publicationDate":"2025-01-27","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Agricultural and Forest Meteorology","FirstCategoryId":"97","ListUrlMain":"https://doi.org/10.1016/j.agrformet.2025.110406","RegionNum":1,"RegionCategory":"农林科学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q1","JCRName":"AGRONOMY","Score":null,"Total":0}
引用次数: 0
Abstract
The land surface temperature gradient (LSTG) serves as a key indicator of mountain thermal patterns that critically influences hydrological and ecological processes in mountainous regions. However, our understanding of LSTG across the Asian high mountains (AHM) is limited due to sparse observations and unexplored influences of surface characteristic heterogeneity within the grid used for LSTG calculation. Using a novel gridded dataset of monthly LSTG with improved local reliability, this study firstly uncovers significant spatiotemporal variations in AHM LSTGs. Then, employing an explainable machine learning approach coupled with surface energy balance analyses, we investigate the effects of ten environmental factors, including sub-grid gradients of snow, cloud, and vegetation cover. Our results reveal that spatial variations of annual LSTGs are predominantly driven by downward longwave radiation and sub-grid snow cover gradient index (SGI), with SGI dominating during cold months (April‒November) due to the substantial cooling effects of snow at higher elevations. Seasonally, three distinct LSTG patterns are detected: Spring-unimodal (21.0% of the study area), characterized by a single peak in spring; Summer-unimodal (25.2%), with a single peak in summer; and Spring-Autumn-bimodal (34.6%), showing two peaks in spring and autumn. These patterns are closely linked to local snow cover dynamics, with SGI playing a critical role in shaping the Spring-unimodal and Spring-Autumn-bimodal patterns through snow-albedo feedback, while surface net radiation primarily drives the Summer-unimodal pattern. Interannually, most of the significant LSTG trends are decreasing, mainly attributed to accelerated snow cover depletion at higher elevations, while increased vegetation cover gradient is the main contributor to increasing LSTGs. These findings highlight the importance of considering fine-scale surface heterogeneity in understanding mountain climate dynamics. The results also inform future research on integrating LSTG into ecological, agricultural, and hydrological models to better predict climate change impacts on high-mountain ecosystems.
期刊介绍:
Agricultural and Forest Meteorology is an international journal for the publication of original articles and reviews on the inter-relationship between meteorology, agriculture, forestry, and natural ecosystems. Emphasis is on basic and applied scientific research relevant to practical problems in the field of plant and soil sciences, ecology and biogeochemistry as affected by weather as well as climate variability and change. Theoretical models should be tested against experimental data. Articles must appeal to an international audience. Special issues devoted to single topics are also published.
Typical topics include canopy micrometeorology (e.g. canopy radiation transfer, turbulence near the ground, evapotranspiration, energy balance, fluxes of trace gases), micrometeorological instrumentation (e.g., sensors for trace gases, flux measurement instruments, radiation measurement techniques), aerobiology (e.g. the dispersion of pollen, spores, insects and pesticides), biometeorology (e.g. the effect of weather and climate on plant distribution, crop yield, water-use efficiency, and plant phenology), forest-fire/weather interactions, and feedbacks from vegetation to weather and the climate system.