绘制莫斯科地区沼泽森林地图,以编制甲烷和二氧化碳通量清单。

D. V. Ilyasov, S. Y. Mochenov, A. I. Rokova, M. Glagolev, I. Kupriianova, G. G. Suvorov, A. Sabrekov, I. Terentieva
{"title":"绘制莫斯科地区沼泽森林地图,以编制甲烷和二氧化碳通量清单。","authors":"D. V. Ilyasov, S. Y. Mochenov, A. I. Rokova, M. Glagolev, I. Kupriianova, G. G. Suvorov, A. Sabrekov, I. Terentieva","doi":"10.18822/edgcc568952","DOIUrl":null,"url":null,"abstract":"Introduction. Methane and carbon dioxide are the most important greenhouse gases, the increase in the concentration of which in the atmosphere is the main cause of climate change [Taylor and Penner, 1994; Drösler et al., 2014; Hoegh-Guldberg et al., 2019]. In addition to relatively constant sources of methane and carbon dioxide into the atmosphere (such as oligotrophic bogs of the boreal zone), there are sporadic sources (SS): intermittently flooded floodplains, boreal swamp forests, some intermittently swamp forests, etc. Despite the variability of SS as sources of methane, CH4 fluxes in floodplains and in swamp forests can reach 0.1–12.5 [Whalen et al., 1991; Van Huissteden et al., 2005; Terentieva et al., 2019] and 0.7 – 17.1 mgC m-2 h-1 [Moore and Knowles, 1990; Ambus and Christensen, 1995; Aronson et al., 2012; Koskinen et al., 2016; Glagolev et al., 2018], respectively. These values are comparable, and exceed those observed in bogs under certain conditions (a combination of soil moisture and temperature, and other factors) [Gulledge and Schimel, 2000; Vasconcelos et al., 2004; Ullah and Moore, 2011; Shoemaker et al., 2014; Christiansen et al., 2017; Torga et al., 2017; Glagolev et al., 2018; Mochenov et al., 2018]. Unfortunately, in Russia, studies of CH4 and CO2 fluxes from sporadic sources are extremely limited (one-time measurements were performed without reference to spatial, seasonal, and interannual variability of conditions) and were carried out mainly in Western Siberia [Sabrekov et al., 2013; Mochenov et al., 2018; Glagolev et al., 2018; Terentieva et al., 2019] and the European part of Russia [Kuznetsov and Bobkova, 2014; Ivanov et al., 2018; Glukhova et al., 2021; Glukhova et al., 2022]. In general, medium-scale (at the Federal subject level) studies of bogs and forests in Russia have not been carried out in all regions, although they are of particular interest due to the possibility of maintaining a balance between the detailing of estimates and the magnitude of spatiotemporal coverage [Zatsarinnaya and Volkova, 2011; Grishutkin et al., 2013; Baisheva et al., 2015; Ilyasov et al., 2019; Suslova, 2019]. Besides, estimates made throughout the country require clarification at the regional level [Vompersky et al., 2005]. The aim of our work was the simplest inventory of swamp forests of the Moscow region as sources of CH4 and CO2 using GIS mapping and field measurements. Objects and methods. The basis for the map of swamp forests of the Moscow region (hereinafter, by this term we mean the total territory of Moscow and the Moscow region) was a mosaic of 6 Landsat-8 satellite images. The mapping was carried out using the Supervised Classification algorithm in the Multispec program (Purdue Research Foundation, USA). For each decryption class, at least 7 training polygons were set and the classification module was launched using the maximum likelihood estimation. After the classification, the decryption classes were combined into typological ones: “forest” (automorphic forests), “water surfaces” (rivers, lakes, other water bodies), “swamp forest” (excessively moist forests with a water table level (WTL), predominantly located on the soil surface or close to it) and “wet forest” (excessively moist forests with predominant WTL below the soil surface). We considered the classes of swamp forests and wet forests, regardless of the presence or absence of peat layer in them: the key criterion was WTL. To assess the accuracy of the classification, an error matrix was compiled. For that purpose, on the resulting map, the first operator identified 75 points evenly distributed in space within each typological class; the coordinates of these points without specifying the belonging to the class were randomly sorted and passed to the second operator. Further, the points were assigned to one of the mapped classes based on “blind” visual expert interpretation using ultra-high resolution satellite images. The overall classification accuracy was determined as the ratio of the sum of points, whose mapped and real classes coincide, to the total number of points (Table 1). Measurements of carbon dioxide and methane fluxes were carried out from 2019 to 2022 in the Dorokhovo mixed black alder moist grass forest, located 66 km west of the border of Moscow, using the static chamber method [Hutchinson and Mosier, 1981; Terent'eva et al., 2017]. Opaque chambers were used in the measurements, so the term “CO2 flux” used in the paper implies the sum of the respiration of the soil-grass-moss cover. The calculation of the annual flux of methane and carbon dioxide from the swamp forests of the Moscow region was performed seasonally using the simplest inventory method [Glagolev, 2010]: ФОРМУЛА НЕ РИСУНОК where Aij – is the area (m2) occupied by the i-th source type in the j-th region; fi – is the surface flux density (mgC m-2 h-1), characteristic of the i-th source type; Tj – is the duration of the emission period (hour), characteristic of the j-th region. The duration of the methane emission period within individual seasons was taken on the basis of hydrothermal coefficients and the radiation index as follows: summer – 122 days (from June to September inclusive), autumn – 76 days (from October to mid-December), winter – 90 days (from mid-December to mid-March), spring – 77 days (from mid-March to the end of May). The surface flux density was calculated as the median (and also 1Q, 3Q) for the considered season based on all observations. Results. The resulting map of swamp forests of the Moscow region is shown in Figure 1 and is characterized by the following areas of typological classes: “forest” - 2,157,716 ha, “water surfaces” 45,693 - ha, “swamp forest” - 58,384 ha, “wet forest” - 233,865 ha. Thus, the total share of forest ecosystems that are able to function as sources of methane - swamp forests and wet forests - is 1.2 and 5.0% of the region's area, respectively (in total 292,249 ha). According to the map, swamp forests are predominantly small ecosystems (from small ones with an area of 3-5 ha, which are extremely widespread, to larger ones, with an area of 30-50 ha, which are somewhat less common), which are exposed to excessive moisture as a result of their location on the outskirts of wetland massifs, near river floodplains, in small local relief depressions, as well as in elements of a ravine-gully planting (mainly in the southern part of the Moscow region). Wet forests are located in more drained areas, often associated with swamp forests in a single landscape structures, but they are much more widespread, and often occupy significantly larger areas: from 10–50 to 100–500 ha. The error matrix of the resulting map is presented in Table. 1. The overall classification accuracy (the ratio of the sum of the elements of the main diagonal of the error matrix to the sum of checkpoints by class) is 76%. Water surfaces with the highest possible producer’s accuracy (100%) are most accurately identified. The “other” class has the same user’s accuracy as water surfaces (93%), but poorly less producer’s accuracy (74%). In general, the classes of swamp and wet forests are the least accurately defined (36–46%): they have significant intersections with all classes except that for the open water surface, and, most importantly, with each other. In order to achieve a reasonable classification accuracy and to make further calculations of the regional flow, we combined the “swamp forest” and “wet forest” classes into one: in this case, the user’s accuracy of the combined class was 65%, and the producer’s accuracy was 74%, which allows us to fairly accurately predict the location of forests of varying degrees of waterlogging when they are considered together. Generalized results of measurements of methane and carbon dioxide fluxes by seasons and their brief statistical characteristics are presented in Table. 2. The simplest inventory based on the proposed approach makes it possible to estimate the methane flux from the soils of swamp forests with different degrees of waterlogging at 6666 tC yr-1 (1Q – 407; 3Q – 38790); carbon dioxide at 1.5 MtC yr-1 (1Q – 0.6; 3Q – 2.7). Taking into account the 100-year global warming potential for methane equal to 28 [Drösler et al., 2014], the total emission of methane and carbon dioxide from the soils of swamp forests with different degrees of waterlogging was 5.7 MtCO2-eq yr-1 (1Q – 2.2; 3Q – 11.4)[1]. More detailed information obtained on the basis of the simplest inventory presents in table 3. Discussion. According to the data of the Great Russian Encyclopedia [Osipov et al., 2004], the area of automorphic forests in the Moscow region in 2015 amounted to 1,896,000 ha, which is in good agreement with the data obtained based on the current classification (the area of the “forest” class amounted to 2,157,716 ha). The distribution of swamp forests in the north of the Moscow region, observed on the resulting map, corresponds to swamp black alder, downy birch forests, as well as forests with gray alder on the map of G.N. Ogureeva et al. [1996]. In the southeastern part of the Moscow region, the areas occupied by swamp forests, according to the results of satellite data classification, are identical to the distribution of downy birch and pine-spruce-long-moss-sphagnum forests along the edges of wetlands. Wet forests are located to the south of the Ruza Reservoir correspond to spruce forests with gray alder, whereas those located to the northwest of the town of Klin are associated with black alder forests and pine-spruce forests with black alder (Ogureeva et al., 1996). The area occupied by swamp and wet forests identified in the current work is comparable to that of distribution of forests with black and gray alder (5.01 and 1.44% of the area of the region) provided in (Kotlov and Chernenkova, 2020), which indirectly confirms the assessment adequacy of the share of the territory occupied by wetland fore","PeriodicalId":336975,"journal":{"name":"Environmental Dynamics and Global Climate Change","volume":"180 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2023-10-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Moscow region’s swamp forests mapping for inventory of CH4 and CO2 fluxes.\",\"authors\":\"D. V. Ilyasov, S. Y. Mochenov, A. I. Rokova, M. Glagolev, I. Kupriianova, G. G. Suvorov, A. Sabrekov, I. Terentieva\",\"doi\":\"10.18822/edgcc568952\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Introduction. Methane and carbon dioxide are the most important greenhouse gases, the increase in the concentration of which in the atmosphere is the main cause of climate change [Taylor and Penner, 1994; Drösler et al., 2014; Hoegh-Guldberg et al., 2019]. In addition to relatively constant sources of methane and carbon dioxide into the atmosphere (such as oligotrophic bogs of the boreal zone), there are sporadic sources (SS): intermittently flooded floodplains, boreal swamp forests, some intermittently swamp forests, etc. Despite the variability of SS as sources of methane, CH4 fluxes in floodplains and in swamp forests can reach 0.1–12.5 [Whalen et al., 1991; Van Huissteden et al., 2005; Terentieva et al., 2019] and 0.7 – 17.1 mgC m-2 h-1 [Moore and Knowles, 1990; Ambus and Christensen, 1995; Aronson et al., 2012; Koskinen et al., 2016; Glagolev et al., 2018], respectively. These values are comparable, and exceed those observed in bogs under certain conditions (a combination of soil moisture and temperature, and other factors) [Gulledge and Schimel, 2000; Vasconcelos et al., 2004; Ullah and Moore, 2011; Shoemaker et al., 2014; Christiansen et al., 2017; Torga et al., 2017; Glagolev et al., 2018; Mochenov et al., 2018]. Unfortunately, in Russia, studies of CH4 and CO2 fluxes from sporadic sources are extremely limited (one-time measurements were performed without reference to spatial, seasonal, and interannual variability of conditions) and were carried out mainly in Western Siberia [Sabrekov et al., 2013; Mochenov et al., 2018; Glagolev et al., 2018; Terentieva et al., 2019] and the European part of Russia [Kuznetsov and Bobkova, 2014; Ivanov et al., 2018; Glukhova et al., 2021; Glukhova et al., 2022]. In general, medium-scale (at the Federal subject level) studies of bogs and forests in Russia have not been carried out in all regions, although they are of particular interest due to the possibility of maintaining a balance between the detailing of estimates and the magnitude of spatiotemporal coverage [Zatsarinnaya and Volkova, 2011; Grishutkin et al., 2013; Baisheva et al., 2015; Ilyasov et al., 2019; Suslova, 2019]. Besides, estimates made throughout the country require clarification at the regional level [Vompersky et al., 2005]. The aim of our work was the simplest inventory of swamp forests of the Moscow region as sources of CH4 and CO2 using GIS mapping and field measurements. Objects and methods. The basis for the map of swamp forests of the Moscow region (hereinafter, by this term we mean the total territory of Moscow and the Moscow region) was a mosaic of 6 Landsat-8 satellite images. The mapping was carried out using the Supervised Classification algorithm in the Multispec program (Purdue Research Foundation, USA). For each decryption class, at least 7 training polygons were set and the classification module was launched using the maximum likelihood estimation. After the classification, the decryption classes were combined into typological ones: “forest” (automorphic forests), “water surfaces” (rivers, lakes, other water bodies), “swamp forest” (excessively moist forests with a water table level (WTL), predominantly located on the soil surface or close to it) and “wet forest” (excessively moist forests with predominant WTL below the soil surface). We considered the classes of swamp forests and wet forests, regardless of the presence or absence of peat layer in them: the key criterion was WTL. To assess the accuracy of the classification, an error matrix was compiled. For that purpose, on the resulting map, the first operator identified 75 points evenly distributed in space within each typological class; the coordinates of these points without specifying the belonging to the class were randomly sorted and passed to the second operator. Further, the points were assigned to one of the mapped classes based on “blind” visual expert interpretation using ultra-high resolution satellite images. The overall classification accuracy was determined as the ratio of the sum of points, whose mapped and real classes coincide, to the total number of points (Table 1). Measurements of carbon dioxide and methane fluxes were carried out from 2019 to 2022 in the Dorokhovo mixed black alder moist grass forest, located 66 km west of the border of Moscow, using the static chamber method [Hutchinson and Mosier, 1981; Terent'eva et al., 2017]. Opaque chambers were used in the measurements, so the term “CO2 flux” used in the paper implies the sum of the respiration of the soil-grass-moss cover. The calculation of the annual flux of methane and carbon dioxide from the swamp forests of the Moscow region was performed seasonally using the simplest inventory method [Glagolev, 2010]: ФОРМУЛА НЕ РИСУНОК where Aij – is the area (m2) occupied by the i-th source type in the j-th region; fi – is the surface flux density (mgC m-2 h-1), characteristic of the i-th source type; Tj – is the duration of the emission period (hour), characteristic of the j-th region. The duration of the methane emission period within individual seasons was taken on the basis of hydrothermal coefficients and the radiation index as follows: summer – 122 days (from June to September inclusive), autumn – 76 days (from October to mid-December), winter – 90 days (from mid-December to mid-March), spring – 77 days (from mid-March to the end of May). The surface flux density was calculated as the median (and also 1Q, 3Q) for the considered season based on all observations. Results. The resulting map of swamp forests of the Moscow region is shown in Figure 1 and is characterized by the following areas of typological classes: “forest” - 2,157,716 ha, “water surfaces” 45,693 - ha, “swamp forest” - 58,384 ha, “wet forest” - 233,865 ha. Thus, the total share of forest ecosystems that are able to function as sources of methane - swamp forests and wet forests - is 1.2 and 5.0% of the region's area, respectively (in total 292,249 ha). According to the map, swamp forests are predominantly small ecosystems (from small ones with an area of 3-5 ha, which are extremely widespread, to larger ones, with an area of 30-50 ha, which are somewhat less common), which are exposed to excessive moisture as a result of their location on the outskirts of wetland massifs, near river floodplains, in small local relief depressions, as well as in elements of a ravine-gully planting (mainly in the southern part of the Moscow region). Wet forests are located in more drained areas, often associated with swamp forests in a single landscape structures, but they are much more widespread, and often occupy significantly larger areas: from 10–50 to 100–500 ha. The error matrix of the resulting map is presented in Table. 1. The overall classification accuracy (the ratio of the sum of the elements of the main diagonal of the error matrix to the sum of checkpoints by class) is 76%. Water surfaces with the highest possible producer’s accuracy (100%) are most accurately identified. The “other” class has the same user’s accuracy as water surfaces (93%), but poorly less producer’s accuracy (74%). In general, the classes of swamp and wet forests are the least accurately defined (36–46%): they have significant intersections with all classes except that for the open water surface, and, most importantly, with each other. In order to achieve a reasonable classification accuracy and to make further calculations of the regional flow, we combined the “swamp forest” and “wet forest” classes into one: in this case, the user’s accuracy of the combined class was 65%, and the producer’s accuracy was 74%, which allows us to fairly accurately predict the location of forests of varying degrees of waterlogging when they are considered together. Generalized results of measurements of methane and carbon dioxide fluxes by seasons and their brief statistical characteristics are presented in Table. 2. The simplest inventory based on the proposed approach makes it possible to estimate the methane flux from the soils of swamp forests with different degrees of waterlogging at 6666 tC yr-1 (1Q – 407; 3Q – 38790); carbon dioxide at 1.5 MtC yr-1 (1Q – 0.6; 3Q – 2.7). Taking into account the 100-year global warming potential for methane equal to 28 [Drösler et al., 2014], the total emission of methane and carbon dioxide from the soils of swamp forests with different degrees of waterlogging was 5.7 MtCO2-eq yr-1 (1Q – 2.2; 3Q – 11.4)[1]. More detailed information obtained on the basis of the simplest inventory presents in table 3. Discussion. According to the data of the Great Russian Encyclopedia [Osipov et al., 2004], the area of automorphic forests in the Moscow region in 2015 amounted to 1,896,000 ha, which is in good agreement with the data obtained based on the current classification (the area of the “forest” class amounted to 2,157,716 ha). The distribution of swamp forests in the north of the Moscow region, observed on the resulting map, corresponds to swamp black alder, downy birch forests, as well as forests with gray alder on the map of G.N. Ogureeva et al. [1996]. In the southeastern part of the Moscow region, the areas occupied by swamp forests, according to the results of satellite data classification, are identical to the distribution of downy birch and pine-spruce-long-moss-sphagnum forests along the edges of wetlands. Wet forests are located to the south of the Ruza Reservoir correspond to spruce forests with gray alder, whereas those located to the northwest of the town of Klin are associated with black alder forests and pine-spruce forests with black alder (Ogureeva et al., 1996). The area occupied by swamp and wet forests identified in the current work is comparable to that of distribution of forests with black and gray alder (5.01 and 1.44% of the area of the region) provided in (Kotlov and Chernenkova, 2020), which indirectly confirms the assessment adequacy of the share of the territory occupied by wetland fore\",\"PeriodicalId\":336975,\"journal\":{\"name\":\"Environmental Dynamics and Global Climate Change\",\"volume\":\"180 1\",\"pages\":\"\"},\"PeriodicalIF\":0.0000,\"publicationDate\":\"2023-10-01\",\"publicationTypes\":\"Journal Article\",\"fieldsOfStudy\":null,\"isOpenAccess\":false,\"openAccessPdf\":\"\",\"citationCount\":\"0\",\"resultStr\":null,\"platform\":\"Semanticscholar\",\"paperid\":null,\"PeriodicalName\":\"Environmental Dynamics and Global Climate Change\",\"FirstCategoryId\":\"1085\",\"ListUrlMain\":\"https://doi.org/10.18822/edgcc568952\",\"RegionNum\":0,\"RegionCategory\":null,\"ArticlePicture\":[],\"TitleCN\":null,\"AbstractTextCN\":null,\"PMCID\":null,\"EPubDate\":\"\",\"PubModel\":\"\",\"JCR\":\"\",\"JCRName\":\"\",\"Score\":null,\"Total\":0}","platform":"Semanticscholar","paperid":null,"PeriodicalName":"Environmental Dynamics and Global Climate Change","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.18822/edgcc568952","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0

摘要

导言。甲烷和二氧化碳是最重要的温室气体,它们在大气中浓度的增加是气候变化的主要原因[Taylor 和 Penner,1994 年;Drösler 等人,2014 年;Hoegh-Guldberg 等人,2019 年]。除了向大气排放甲烷和二氧化碳的相对固定来源(如北方地区的低营养沼泽)外,还有一些零星来源(SS):间歇性洪泛平原、北方沼泽森林、一些间歇性沼泽森林等。尽管作为甲烷来源的 SS 存在差异,但洪泛平原和沼泽森林中的 CH4 通量可分别达到 0.1-12.5 [Whalen 等人,1991 年;Van Huissteden 等人,2005 年;Terentieva 等人,2019 年] 和 0.7-17.1 mgC m-2 h-1 [Moore 和 Knowles,1990 年;Ambus 和 Christensen,1995 年;Aronson 等人,2012 年;Koskinen 等人,2016 年;Glagolev 等人,2018 年]。这些数值不相上下,甚至超过了在特定条件下(土壤湿度和温度以及其他因素的综合作用)在沼泽中观测到的数值[Gulledge 和 Schimel,2000 年;Vasconcelos 等人,2004 年;Ullah 和 Moore,2011 年;Shoemaker 等人,2014 年;Christiansen 等人,2017 年;Torga 等人,2017 年;Glagolev 等人,2018 年;Mochenov 等人,2018 年]。遗憾的是,在俄罗斯,对零星来源的甲烷和二氧化碳通量的研究极为有限(进行一次性测量时未考虑空间、季节和年际条件的变化),而且主要是在西西伯利亚进行的[Sabrekov 等人,2013 年;Mochenov 等人,2018 年]、2013年;Mochenov等人,2018年;Glagolev等人,2018年;Terentieva等人,2019年]和俄罗斯欧洲部分[Kuznetsov和Bobkova,2014年;Ivanov等人,2018年;Glukhova等人,2021年;Glukhova等人,2022年]。总体而言,俄罗斯尚未在所有地区开展沼泽和森林的中等规模(联邦主题级别)研究,尽管这些研究因其在估算细节和时空覆盖范围之间保持平衡的可能性而具有特殊意义[Zatsarinnaya 和 Volkova,2011 年;Grishutkin 等人,2013 年;Baisheva 等人,2015 年;Ilyasov 等人,2019 年;Suslova,2019 年]。此外,在全国范围内进行的估算需要在地区层面上加以澄清[Vompersky 等人,2005]。我们工作的目的是利用地理信息系统制图和实地测量,对作为甲烷和二氧化碳来源的莫斯科地区沼泽森林进行最简单的清查。 对象和方法。莫斯科地区(以下指莫斯科和莫斯科州全境)沼泽森林地图的基础是 6 幅 Landsat-8 卫星图像的拼接图。制图采用了 Multispec 程序(美国普渡大学研究基金会)中的监督分类算法。对于每个解密类别,至少设置 7 个训练多边形,并使用最大似然估计法启动分类模块。分类后,解密类别被合并为类型:"森林"(自动形态森林)、"水面"(河流、湖泊、其他水体)、"沼泽森林"(地下水位(WTL)过高的湿润森林,主要位于土壤表面或接近土壤表面)和 "湿润森林"(地下水位主要低于土壤表面的过高湿润森林)。我们考虑了沼泽森林和湿润森林的类别,无论其中是否存在泥炭层:关键标准是 WTL。为了评估分类的准确性,我们编制了误差矩阵。为此,第一名操作员在绘制的地图上确定了 75 个点,这些点在空间上均匀分布在每个类型学类别中;这些点的坐标被随机排序,但未指明属于哪个类别,并传递给第二名操作员。然后,根据专家利用超高分辨率卫星图像进行的 "盲法 "目视判读,将这些点归入所绘制的类别之一。总的分类准确率是指映射类别和实际类别一致的点数之和与总点数之比(表 1)。 二氧化碳和甲烷通量的测量于 2019 年至 2022 年在莫斯科边境以西 66 公里处的多罗霍沃黑赤杨湿草混交林进行,采用的是静态室法[Hutchinson 和 Mosier,1981 年;Terent'eva 等人,2017 年]。测量中使用了不透光室,因此本文中使用的 "二氧化碳通量 "一词指的是土壤-草-苔藓覆盖层呼吸作用的总和。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Moscow region’s swamp forests mapping for inventory of CH4 and CO2 fluxes.
Introduction. Methane and carbon dioxide are the most important greenhouse gases, the increase in the concentration of which in the atmosphere is the main cause of climate change [Taylor and Penner, 1994; Drösler et al., 2014; Hoegh-Guldberg et al., 2019]. In addition to relatively constant sources of methane and carbon dioxide into the atmosphere (such as oligotrophic bogs of the boreal zone), there are sporadic sources (SS): intermittently flooded floodplains, boreal swamp forests, some intermittently swamp forests, etc. Despite the variability of SS as sources of methane, CH4 fluxes in floodplains and in swamp forests can reach 0.1–12.5 [Whalen et al., 1991; Van Huissteden et al., 2005; Terentieva et al., 2019] and 0.7 – 17.1 mgC m-2 h-1 [Moore and Knowles, 1990; Ambus and Christensen, 1995; Aronson et al., 2012; Koskinen et al., 2016; Glagolev et al., 2018], respectively. These values are comparable, and exceed those observed in bogs under certain conditions (a combination of soil moisture and temperature, and other factors) [Gulledge and Schimel, 2000; Vasconcelos et al., 2004; Ullah and Moore, 2011; Shoemaker et al., 2014; Christiansen et al., 2017; Torga et al., 2017; Glagolev et al., 2018; Mochenov et al., 2018]. Unfortunately, in Russia, studies of CH4 and CO2 fluxes from sporadic sources are extremely limited (one-time measurements were performed without reference to spatial, seasonal, and interannual variability of conditions) and were carried out mainly in Western Siberia [Sabrekov et al., 2013; Mochenov et al., 2018; Glagolev et al., 2018; Terentieva et al., 2019] and the European part of Russia [Kuznetsov and Bobkova, 2014; Ivanov et al., 2018; Glukhova et al., 2021; Glukhova et al., 2022]. In general, medium-scale (at the Federal subject level) studies of bogs and forests in Russia have not been carried out in all regions, although they are of particular interest due to the possibility of maintaining a balance between the detailing of estimates and the magnitude of spatiotemporal coverage [Zatsarinnaya and Volkova, 2011; Grishutkin et al., 2013; Baisheva et al., 2015; Ilyasov et al., 2019; Suslova, 2019]. Besides, estimates made throughout the country require clarification at the regional level [Vompersky et al., 2005]. The aim of our work was the simplest inventory of swamp forests of the Moscow region as sources of CH4 and CO2 using GIS mapping and field measurements. Objects and methods. The basis for the map of swamp forests of the Moscow region (hereinafter, by this term we mean the total territory of Moscow and the Moscow region) was a mosaic of 6 Landsat-8 satellite images. The mapping was carried out using the Supervised Classification algorithm in the Multispec program (Purdue Research Foundation, USA). For each decryption class, at least 7 training polygons were set and the classification module was launched using the maximum likelihood estimation. After the classification, the decryption classes were combined into typological ones: “forest” (automorphic forests), “water surfaces” (rivers, lakes, other water bodies), “swamp forest” (excessively moist forests with a water table level (WTL), predominantly located on the soil surface or close to it) and “wet forest” (excessively moist forests with predominant WTL below the soil surface). We considered the classes of swamp forests and wet forests, regardless of the presence or absence of peat layer in them: the key criterion was WTL. To assess the accuracy of the classification, an error matrix was compiled. For that purpose, on the resulting map, the first operator identified 75 points evenly distributed in space within each typological class; the coordinates of these points without specifying the belonging to the class were randomly sorted and passed to the second operator. Further, the points were assigned to one of the mapped classes based on “blind” visual expert interpretation using ultra-high resolution satellite images. The overall classification accuracy was determined as the ratio of the sum of points, whose mapped and real classes coincide, to the total number of points (Table 1). Measurements of carbon dioxide and methane fluxes were carried out from 2019 to 2022 in the Dorokhovo mixed black alder moist grass forest, located 66 km west of the border of Moscow, using the static chamber method [Hutchinson and Mosier, 1981; Terent'eva et al., 2017]. Opaque chambers were used in the measurements, so the term “CO2 flux” used in the paper implies the sum of the respiration of the soil-grass-moss cover. The calculation of the annual flux of methane and carbon dioxide from the swamp forests of the Moscow region was performed seasonally using the simplest inventory method [Glagolev, 2010]: ФОРМУЛА НЕ РИСУНОК where Aij – is the area (m2) occupied by the i-th source type in the j-th region; fi – is the surface flux density (mgC m-2 h-1), characteristic of the i-th source type; Tj – is the duration of the emission period (hour), characteristic of the j-th region. The duration of the methane emission period within individual seasons was taken on the basis of hydrothermal coefficients and the radiation index as follows: summer – 122 days (from June to September inclusive), autumn – 76 days (from October to mid-December), winter – 90 days (from mid-December to mid-March), spring – 77 days (from mid-March to the end of May). The surface flux density was calculated as the median (and also 1Q, 3Q) for the considered season based on all observations. Results. The resulting map of swamp forests of the Moscow region is shown in Figure 1 and is characterized by the following areas of typological classes: “forest” - 2,157,716 ha, “water surfaces” 45,693 - ha, “swamp forest” - 58,384 ha, “wet forest” - 233,865 ha. Thus, the total share of forest ecosystems that are able to function as sources of methane - swamp forests and wet forests - is 1.2 and 5.0% of the region's area, respectively (in total 292,249 ha). According to the map, swamp forests are predominantly small ecosystems (from small ones with an area of 3-5 ha, which are extremely widespread, to larger ones, with an area of 30-50 ha, which are somewhat less common), which are exposed to excessive moisture as a result of their location on the outskirts of wetland massifs, near river floodplains, in small local relief depressions, as well as in elements of a ravine-gully planting (mainly in the southern part of the Moscow region). Wet forests are located in more drained areas, often associated with swamp forests in a single landscape structures, but they are much more widespread, and often occupy significantly larger areas: from 10–50 to 100–500 ha. The error matrix of the resulting map is presented in Table. 1. The overall classification accuracy (the ratio of the sum of the elements of the main diagonal of the error matrix to the sum of checkpoints by class) is 76%. Water surfaces with the highest possible producer’s accuracy (100%) are most accurately identified. The “other” class has the same user’s accuracy as water surfaces (93%), but poorly less producer’s accuracy (74%). In general, the classes of swamp and wet forests are the least accurately defined (36–46%): they have significant intersections with all classes except that for the open water surface, and, most importantly, with each other. In order to achieve a reasonable classification accuracy and to make further calculations of the regional flow, we combined the “swamp forest” and “wet forest” classes into one: in this case, the user’s accuracy of the combined class was 65%, and the producer’s accuracy was 74%, which allows us to fairly accurately predict the location of forests of varying degrees of waterlogging when they are considered together. Generalized results of measurements of methane and carbon dioxide fluxes by seasons and their brief statistical characteristics are presented in Table. 2. The simplest inventory based on the proposed approach makes it possible to estimate the methane flux from the soils of swamp forests with different degrees of waterlogging at 6666 tC yr-1 (1Q – 407; 3Q – 38790); carbon dioxide at 1.5 MtC yr-1 (1Q – 0.6; 3Q – 2.7). Taking into account the 100-year global warming potential for methane equal to 28 [Drösler et al., 2014], the total emission of methane and carbon dioxide from the soils of swamp forests with different degrees of waterlogging was 5.7 MtCO2-eq yr-1 (1Q – 2.2; 3Q – 11.4)[1]. More detailed information obtained on the basis of the simplest inventory presents in table 3. Discussion. According to the data of the Great Russian Encyclopedia [Osipov et al., 2004], the area of automorphic forests in the Moscow region in 2015 amounted to 1,896,000 ha, which is in good agreement with the data obtained based on the current classification (the area of the “forest” class amounted to 2,157,716 ha). The distribution of swamp forests in the north of the Moscow region, observed on the resulting map, corresponds to swamp black alder, downy birch forests, as well as forests with gray alder on the map of G.N. Ogureeva et al. [1996]. In the southeastern part of the Moscow region, the areas occupied by swamp forests, according to the results of satellite data classification, are identical to the distribution of downy birch and pine-spruce-long-moss-sphagnum forests along the edges of wetlands. Wet forests are located to the south of the Ruza Reservoir correspond to spruce forests with gray alder, whereas those located to the northwest of the town of Klin are associated with black alder forests and pine-spruce forests with black alder (Ogureeva et al., 1996). The area occupied by swamp and wet forests identified in the current work is comparable to that of distribution of forests with black and gray alder (5.01 and 1.44% of the area of the region) provided in (Kotlov and Chernenkova, 2020), which indirectly confirms the assessment adequacy of the share of the territory occupied by wetland fore
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