Hydrometeorological data from a Remotely Operated Multi-Parameter Station network in Central Asia

The regional research network Water in Central Asia (CAWa) funded by the German Federal Foreign Office consists of 18 remotely operated multi-parameter stations (ROMPSs) in Central Asia. These stations were installed by the German Research Centre for Geosciences (GFZ) in Potsdam, Germany, in close cooperation with the Central-Asian Institute for Applied Geosciences (CAIAG) in Bishkek, Kyrgyzstan; the national hydrometeorological services in Tajikistan and Uzbekistan; the Ulugh Beg Astronomical Institute in Tashkent, Uzbekistan; and the Kabul Polytechnic University, Afghanistan. The primary objective of these stations is to support the establishment of a reliable data basis of meteorological and hydrological data especially in remote areas with extreme climate conditions for applications in climate and water monitoring in Central Asia. Up to now, 10 years of data have been provided for an area of scarce station distribution and with limited open-access data which can be used for a wide range of scientific or engineering applications. The data described in this paper are made publicly available with the digital object identifier (DOI) https://doi.org/10.5880/GFZ.1.2.2020.002 (Zech et al., 2020) or via the Sensor Data Storage System (SDSS) at http://sdss.caiag.kg (last access: 22 February 2021).

the water availability and its different utilization are the most challenging problems. While the water from the mountainous areas is used for the generation of hydropower due to the lack of other energy-providing resources in the upstream countries, the demand for agricultural irrigation in the downstream countries in summer contrasts with the release of water from the reservoirs during the winter season . Additionally, after 1991, the monitoring network degraded significantly in this region (Finaev, 2009;Glazirin, 2009;Kuzmichenok, 2009) mainly due to economic shortening resulting in a lack of information urgently needed for water availability decisions (Unger-Shayesteh et al., 2015). To support the Central Asian countries in transboundary water resource management based on reliable in situ and remote sensing data and to make water a subject of peaceful cooperation, the German Federal Foreign Office launched the German Water Initiative for Central Asia "Berlin Process" in April 2008. The primary goal was to assist the cooperation between the Central Asian countries with regard to energy and water management on the political, scientific-technical and educational level.
The scientific-technical level aimed at achieving the establishment of a reliable data basis for hydrological and meteorological data and the implementation of new technical monitoring and data distribution solutions. These goals were addressed by the regional research network Water in Central Asia (CAWa) funded by the German Federal Foreign Office and coordinated by the German Research Centre for Geosciences (GFZ) in Potsdam, Germany. To support the reconstruction of the degraded network of meteorological and hydrological station infrastructure and to provide nearreal-time hydrometeorological data, the Remotely Operated Multi-Parameter Station (ROMPS) network  together with a remote-sensing monitoring system of rivers, reservoirs, and lake levels  has been established over the past 10 years. To support the activities and to strengthen the geoscientific cooperation between the five Central Asian countries and Afghanistan, additional funding has been provided by GFZ through the Global Change Observatory Central Asia (GCO-CA) and the Advanced Remote Sensing -Ground Truth Demo and Test Facilities (ACROSS) projects of the Helmholtz Association (Helmholtz Society, 2015). While some of these stations have been installed to additionally monitor the tectonically active parts of the Pamir Mountains and Tian Shan areas with a global navigation satellite system (GNSS) , others are dedicated to monitoring glacier dynamics and glacier lake outburst floods  and to re-establishing glacier monitoring for mass balance studies (Hoelzle et al., 2012).
The objective of this paper is to describe the near-realtime meteorological and hydrological observations provided by the CAWa, GCO-CA and ACROSS station network. An overview of the station locations, the methods of data collec-tion including their known quality issues and further documentation are given in the next sections.

Station network
To support the construction of new hydrometeorological stations, close cooperation between different agencies and institutes in Central Asia has been developed. One of the main partners is the Central-Asian Institute for Applied Geosciences (CAIAG) in Bishkek, Kyrgyzstan, which was founded in 2004 by the government of the Kyrgyz Republic and the GFZ. Additionally, cooperation with the national hydrometeorological services (hydromet services) in Kyrgyzstan (KgHM), Tajikistan (TjHM) and Uzbekistan (UzHM) the Ulugh Beg Astronomical Institute (UBAI) in Tashkent, Uzbekistan, as well as with the Kabul Polytechnic University (KPU), Afghanistan, has been established. In joint collaboration with these partners, 18 stations have been installed altogether and are jointly operated. Thereof, 8 stations from Kyrgyzstan, 3 stations from Uzbekistan, 2 stations from Tajikistan and 1 station from Afghanistan are providing data. The stations are located in different climatic regions, reaching from high altitudes (4124 m a.s.l.) in the mountains and at glaciers down to low elevations (318 m a.s.l.) in flat and dry areas covering three different Central Asian countries and Afghanistan Schöne et al., 2019). The station locations were selected together with the hydromet services and partners with regard to previous network coverage, meteorological information content, possibility of satellite data transfer and station security aspects. However, some stations have been installed at existing meteorological stations or "hydroposts" with manual readings performed by a local operator. The intention was to combine and compare the manual with the digital measurements as well as to ensure the safety of the equipment.

Instruments and data storage
The stations are designed for operation in remote areas and high altitudes, especially under extreme climate conditions with temperatures ranging from +60 to −60 • C . To keep the maintenance efforts low, the general technical setup of all ROMPSs is identical at most locations. The system operates independently and automatically in order to reduce the need for manual interventions of a local operator. All stations consist of outside connected sensors and a waterproof (IP66) station main box (see Fig. 6) integrating the central electronic components for the general operation such as the station computer system, independent (solar) power supply and data communication systems. Two alternative communication lines were chosen: either two different satellite systems (very small aperture terminal -VSAT -and Iridium) or, depending on the signal coverage, one satellite (VSAT) and one ground communication line (Global System for Mobile Communication -GSM). Due to their independence from local infrastructures (power, data transmission and manual interaction), the stations are suitable for remote areas with difficult accessibility.
The station outline is determined by the selection of meteorological sensors and can be differentiated into two types. The first type consists of a set of separate sensors complying with the World Meteorological Organization (WMO) requirements (WMO, 2018b) that are arranged around the station main box to avoid interferences with each other (Fig. 2). At the second type of station (Fig. 3), a compact weather transmitter is used. Figure 4 shows a typical station outline for station type one, but depending on the local environment, the sensors are arranged differently at other stations.
All stations are equipped with a standard set of meteorological sensors. Table 1 lists the measured parameters for each station type.
At selected locations, the stations have been augmented with a river discharge monitoring system and/or a snow measuring system. While the snow system is usually located adjacent to the other sensors (see Fig. 2 to the left), the discharge system is installed directly at rivers which can be separated from the station main box (see Fig. 5) by several hundred metres. This system consists of an independent power supply, and the data are transmitted in regular intervals by a radio link to the main station. The snow system measures the following parameters: content of liquid water and ice, snow density, and snow water equivalent (SWE). The river discharge system provides the following parameters: water level, surface flow velocity, and -(computed) river discharge volume.
The primary service of the CAWa ROMPS network is to provide meteorological and hydrological data (Schöne et al., , 2019, especially from the high-mountain areas of Central Asia supporting the national hydromet services and the regional and international scientific community. The stations with their installed sensor systems and start-ofoperation dates are listed in Table 2. The start of operation does not necessarily match with the start of all sensor systems. In some cases, individual sensors were installed at a later date.    Additionally to the hydrometeorological data acquisition, some stations integrate other sensors, such as broadband seismometers for the GEOFON network (GEOFON, 2020); automated cameras for glacier monitoring and mass balance calculations (Hoelzle et al., 2017) operated by the University of Fribourg, Switzerland (UniFr); GNSS receivers for investigation of glacier dynamics and glacier lake outburst flood (GLOF) monitoring  operated by GFZ or measurements of snow water equivalent (SWE) with cosmic-ray neutron sensing (e.g. Schattan et al., 2018) installed by the University of Innsbruck, Austria (UIbk). Table 3 gives an overview of the sites of the additionally installed sensors.

Meteorological sensors
The compact weather transmitter (Vaisala WXT520 or WXT530) offers six meteorological parameters in one compact unit. It measures wind speed and direction, precipitation, atmospheric pressure, air temperature, and relative humidity. The wind is estimated by transit time through three equally spaced ultrasonic transducers on a horizontal plane. The precipitation sensor on top of the transmitter detects the impact of individual raindrops by noise detection with a piezoelectric sensor. Each raindrop produces a signal that can be converted directly to accumulated rainfall and hail (Vaisala WXT520, 2012) and to rain or hail intensity and duration. The PTU (pressure, temperature, humidity) module measures the atmospheric pressure, air temperature and humidity with a capacitive silicon element for the pressure, a  Table 2. Station list with their start of operation dates and the installed sensors systems. While the column "Meteo. sensors" refers to various individual sensors, the "Weather sensor" column refers to the compact weather transmitter (station type two).

Station
Country capacitive ceramic element for the temperature and a capacitive thin film polymer element for the humidity. The PTU component is fixed inside a radiation shield to protect the sensor from direct sunlight. The combined temperature and humidity sensor (Vaisala HMP45, Vaisala HMP155, Campbell Scientific CS215 or Galltec+Mela KPK 1/5 ME) provides air temperature and relative humidity data. The humidity measurement is based on the capacitive thin-film polymer probe which either absorbs or releases water vapour that changes the dielectric properties and, therefore, the capacitance of the sensor. The temperature measurement is based on the resistive platinum Table 3. Station list with additionally installed sensors. The column "Partner" in this table does not refer to the institute that is operating the station but to the owner of the additionally installed sensor.

Station Name
Country Partner Seismometer GNSS SWE Camera . Station main box. Topside: the computer and power module is visible. The VSAT and Iridium modem are located at the back. Below is the GNSS receiver (left), the barometric sensor (middle) and the Campbell data logger  probe. Both probes are located at the tip of the sensor and are protected by a sintered Teflon filter. The sensor is fixed inside a radiation shield to protect the sensor from direct sunlight and is mounted on a steel mast. The barometric pressure transducer (Setra 278 or Campbell Scientific CS115) measures the actual local atmospheric pressure. The sensor is fixed inside the station main box but is led to the outside of the box with a connecting air tube.
The alpine wind monitor (RM Young 05103-45) is used to measure the horizontal wind speed and direction. The wind speed is measured with a helicoid-shaped, four-blade propeller. The rotation of the propeller produces a signal propor-tional to the wind speed. The position of the vane is transmitted by a potentiometer, and its output voltage is proportional to the wind direction. The wind sensor is mounted on top of a 10 m steel mast.
The tipping bucket rain gauge (RM Young 52203 or Thies 5.4032.35.008) measures liquid precipitation with a tipping bucket mechanism. The measured liquid rain drains through a collection tube for verification of the total rainfall by mechanically tipping a scale. As the tipping bucket is not heated, winter precipitation is strongly biased in regions with frequent temperatures around or below 0 • C. The rain sensor is installed on a steel mast which is fixed with tensioning wires to reduce the influence of wind-induced vibrations.
The net radiometer (Hukseflux NR01) measures the incoming shortwave and longwave infrared radiation as well as the surface-reflected shortwave and outgoing longwave infrared radiation. It consists of a pyranometer and a pyrgeometer pair that faces upward and a complementary pair that faces downward. The pyranometers and pyrgeometers measure the shortwave and the far-infrared radiation, respectively. The sensor is fixed at a steel mast.
The water content reflectometer (Campbell Scientific CS616) measures the volumetric water content of porous media. It uses time-domain measurement methods that are sensitive to the dielectric permittivity of the used medium which changes with the water content of the soil material. In our installations, typically six sensors are installed in the ground at different depths.
The soil temperature probe (Campbell Scientific T107) uses a thermistor to measure the temperature and, therefore, can be used in air, water and soil. Typically, six sensors are installed in the ground at different depths adjacent to the water content reflectometers.

Hydrological sensors
The discharge measurement system (Sommer RQ-24) enables the contact-free measurement of the surface flow velocity plus the water level and automatically calculates the discharge quantity of the water using a user-defined river cross section. The measurement of flow velocity is based on the Doppler shift principle. The sensor calculates local flow by comparing an emitted frequency with the frequency reflected by the water surface (Doppler shift). The water level is mea-sured by using time-delay measurements. The pulse radar emits impulses with a specific length in the lower microsecond range perpendicular to the water surface. The time delay between emission and reception of the impulse is proportional to the distance from the water surface. The calculation of the discharge is based on the continuity equation and determined from the cross section depending on the measured water level, the measured surface velocity and a predefined related k factor which represents the hydraulic properties of the river (e.g. roughness of river bed). While the water level and surface velocity are measured continuously, the cross section and k factor are pre-defined during the installation or changed during maintenance visits.
The snow pack analyser (Sommer SPA) in combination with a snow depth sensor (Sommer USH-8) provides different parameters of snow (see Fig. 7) like snow density, snow water equivalent (SWE) as well as contents of liquid water and ice. The snow depth is measured with an ultrasonic pulse as a distance between the sensor and the (snow) surface. To estimate the volume contents of the individual snow elements (ice, water, air), the complex impedance along a flat ribbon sensor is measured with different frequencies in the snowpack. Since the individual components have different dielectric constants, the volume contents of the liquid water and ice can be determined (Sommer SPA, 2010). The specific volume contents and the liquid water and ice content in the snow are used to calculate the snow density. A combination of the snow depth and the snow density defines the SWE. The content of liquid water and ice is measured at different positions in the snowpack with one sloping sensor (sensor 1) and three horizontal sensors with typical positions of 10 cm (sensor 2), 30 cm (sensor 3) and 50 cm (sensor 4) above the ground. Therefore, the sensor provides four different values for the snow density, the SWE, and content of liquid water and ice. The USH-8 snow depth sensor can also be operated independently without the SPA. In that case, only the snow depth is measured.
Due to the remoteness of most stations, regular calibrations of sensors could not be performed. But sensors were exchanged when problems occurred. Notes to the station documentation can be found in Sect. 6.

Datasets
The datasets comprise the data from all stations and their different sensor systems. The meteorological data have been sampled in 1 min intervals and then converted (average "_Avg", maximum "_Max", time of maximum "_TMax", minimum "_Min", or total "_Tot") to 5 min data that are stored in meteorological files separated for each station. The time consistency is achieved by synchronizing the system daily with a GPS time signal. Table 4 lists all meteorological parameters for the first type of station (individual sensors) for each parameter with their abbreviation, unit and type of sampling to a 5 min value.

Meteorological data
Within the datasets of all meteorological sensors, additional technical values (e.g. battery voltage, record number) are provided but not listed in Tables 4 and 5. Detailed information can be found in the data format specification which is part of the supporting material. Table 5 lists all meteorological parameters for the compact weather transmitter (station type two).

Hydrological data
The snow parameters are measured every 15 min and stored in files, separately from the meteorological data. Table 6 lists the parameters of the snow system that are mainly used for hydrological studies. The system provides additional technical parameters to control the system. A detailed description can be found in the data format specification which is part of the supporting material. The river discharge system performs several consecutive scans of the water surface and checks the reflected value for spikes and weak signals before providing the measurement result. This can cause different measurement intervals depending on the turbulence of the water surface. Like the snow parameters, the discharge measurements are stored in separated files. Table 7 lists the hydrological parameters of the river discharge system. The system provides additional technical parameters to monitor the system state. A detailed description can be found in the data format specification which is part of the supporting material.

Sensor Data Storage System
The easy and open-access provision of meteorological and hydrological data has been the main objective of the ROMPS network operation. The data are open access for usage in environmental research and public information services, such as those the hydromet services provide, and to support information-based decision-making processes especially in the fields of water and land management and climate adaption. The files from the stations are forwarded directly to the open-access Sensor Data Storage System (SDSS) developed and hosted at CAIAG in Bishkek, Kyrgyzstan, and are therefore immediately available to the public. A graphical user interface (in English, Russian and German) offers the possibility of requesting the data interactively by selecting particular stations on a map or from a list of parameters. These values can be displayed as time series and downloaded as an Extensible Markup Language (XML) file. The SDSS web page is accessible through the following link: http://sdss.caiag.kg (last access: 22 February 2021).

Data completeness
All stations have been supplying data continuously since they were installed. But it should be noted that most of the stations are located in remote areas and could not be visited regularly or immediately after technical problems occurred. Therefore, failover procedures to check for stalled software programs and automatic restart scripts have been implemented to minimize or avoid resolvable errors or gaps. Nonetheless, hardware cannot always be secured against outages, especially in remote areas. Major data problems or severe sensor failures that emerged are listed in Sect. 5.
Additionally, due to errors in the data logger configuration, the data were not always sampled in 5 min intervals. At some stations, the data were sampled every minute or with other intervals which especially had an impact on the rain value and the wind speed maximum (gust) that should be a total over 5 min instead of over e.g. 1 min.

Data quality
The available data have to be considered raw data that come directly from the stations and have not undergone any quality control (QC). The primary purpose of the network is to provide near-real-time data for the hydromet services without major time delay. Consistency in or QC on this dataset is beyond the scope of the network operation. QC should be performed at each hydromet service, as these are the responsible national agencies for the data exchange or, accordingly, for each single user.

General problems
Despite not undergoing QC, there are known quality issues that emerged during the operation of the stations, and they are mentioned in this paper to support further user quality management procedures. In particular the known problems such as incorrect configurations, wrong sensor installations or sensor failures that are not obvious for data users are explained below.
The rain sensor with a tipping bucket measurement principle is installed on a steel pillar which tends to vibrate during strong gusts. This can cause the tipping beam to tilt and hence falsely produce a tip, particularly in areas exposed to strong winds. As a consequence, all rain sensors were equipped with additional supporting crossbars to avoid this problem during the years 2013 and 2016. In the wintertime, the measurement of snow or the differentiation between snow and rain is challenging as the sensor is not heated. While parts of the snow in the sensor's cone evaporate, other parts melt and are registered as a measurement. Furthermore, the water from the raindrops has to pass a small funnel to reach the tipping bucket. This funnel can become blocked due to leaves or other dirt which may hamper the measurements and can lead to underestimated or delayed rain data. As there are no local operators at most stations or operators do not live close to the station, the rain sensors could be cleaned only during maintenance visits. The soil sensors tend to have jumps in the measurements for reasons that are so far unknown and different time spans although the sensors have not been touched. In some areas, these sensors are affected by animals (e.g. at TARA by marmots) that nibble the cables. These jumps and sensor failures will not be mentioned in the following listings as these erroneous data are clearly identifiable.
All calculated values (see Table 4) of the solar radiation sensor and especially the albedo provide suspicious values close to sunrise and sunset. The albedo is calculated by the data logger as the quotient from the reflected and the incom-ing shortwave radiation. This can lead to erroneous results when the incoming values tend to be close to zero when it is (nearly) dark.

Problems in the meteorological measurements
Most problems resulted from sensor failures, errors or inconsistencies in the configuration, or incorrect technical installations of sensors. Table 8 lists all known problems of meteorological sensors at the stations. Erroneous data have not been removed from this dataset as they are the raw data coming directly from the station without any quality control. Details about sensor changes or cleaning of sensors can be found in the station documentation (Sect. 6).

Problems in the hydrological measurements
Besides incorrectly configured or connected sensors, problems with the snow depth sensor (values SH) occurred when referencing the time-delay distance measurement to a zero level of the snow or ground, respectively. Due to the accuracy of the system of ±4 mm and the condition of the ground reflection during the referencing process (e.g. fresh vegetation in spring or flat and dry in autumn), negative values close to zero can occur. Furthermore during the summer season at some places, growing grass can affect the measurement by producing a feigned snow depth. The signals of growing grass and sometimes the cutting of grass are clearly visibly as well as the time delay between melting of the snow and growing of grass or first snow in spring and autumn, respectively.
The calculated discharge values provided by the river discharge system are the combination from the measurements of the water level and surface velocity with the cross profile of the river and a k factor which accounts for the hydraulic model of the river flow. In particular, the river cross profile could not always be determined directly at the sensor's installation side but only some metres away. In addition, the cross-section profile may change over time leading to different k factors. Therefore, these values should be used with caution. The discharge values are always influenced by the inaccuracy of the cross profile of the river. Table 9 lists the known problems with the snow and the river discharge system.
These are only the known and documented errors. This list is not intended to be exhaustive. For further usage of the data, different quality control procedures following the WMO or national standards should be implemented. An outlook and suggestions are given in Sect. 8. Additionally, more detailed information about the stations and installed sensors is provided by the station documentation (Sect. 6).

Station documentation
For each station extensive documentation exists describing the location and its surrounding, the technical installation of the station, and the local conditions which might be useful to further interpret certain variations in the sensor data. As the installations had to be adjusted to the local environment, installation maps and specific sensor installation (e.g. height or depth of sensors) are included in the documentation. Due to the stations' spatial expanse and difficult accessibility, maintenance activities could not be performed on a regular basis. Therefore, the documentation also lists all station visits and exchanges of sensors. The file containing the documentation is named as follows: XXXX-HMT-SED-GFZ.pdf with -XXXX being a four-letter code for station name, -HMT being the hydrometeorological station, -SED being a station exposure description, and -GFZ being the agency of originator.
These files are part of the supporting material.

File names
All data are stored in files in the American Standard Code for Information Interchange (ASCII) format containing typically 1 h of data (with sometimes different storage intervals). The different data types are separated into different files. The file name convention provides unique identifiers to distinguish between the different types of measurements as follows: XXXX-<type-of-data>-<timestamp>.log with -XXXX being a four-letter leading identifier for the station abbreviation (see Table 2); -<type of data> being hymetd for meteorological parameters (station type one), meteod for meteorological parameters (station type two), -RQ24 for river discharge parameters, snow for snow parameters, and -USH8 for snow depth values; and -<timestamp> being the Unix time (seconds since 1 January 1970).
Due to historical reasons, a second file name convention exists which is used for the second type of station. These files are named as follows: XXXXWWWWD.met with  -XXXX being a four-letter leading identifier for the station abbreviation (see Table 2); -WWWW being the GPS week (weeks since 6 January 1980); and -D being the day of week, where Sunday is 0.
The individual data files are packed into an archive with tar (Petersen, 2007) that contains 1 month of data files. This monthly file is additionally compressed with bzip2 (Petersen, 2007) to reduce the memory requirements.
The monthly archive files are named as follows: XXXX-<type-of-data>-<year>-<month>.tar.bz2 with -XXXX being a four-letter leading identifier for the station abbreviation (see Table 2); -<type of data> being hymetd for meteorological parameters (station type one), meteod for meteorological parameters (station type two), -RQ24 for river discharge parameters, snow for snow parameters, and -USH8 for snow depth values; -<year> being the four-digit year; and -<month> being the two-digit month of the year.
After 1 year, these 12 monthly files are further archived and compressed into one file. The yearly files follow the same file name convention as the monthly files, but the month is missing in this file name: XXXX-<type-of-data>-<year>.tar.bz2.

Data format
Two data formats exist for the different station types. As the sensors for station type one are connected to a Campbell data logger, the file format largely corresponds to the ASCII Campbell data format. It can be separated into header and data sections. The header section can be further divided into four parts containing one line each as follows: 1. general station information, 2. types of measured parameters listed with their abbreviation, 3. units of measured parameters, and 4. quantity representation (type of sampling) of measured parameters.
After this header section, the data section follows starting with date and time. All values corresponding to the same measurement time are written in one line and are commaseparated. A detailed description of all parts of the data format can be found in the data format specification (Schöne et al., 2020b) which is part of the supporting material. The sensor at station type two provides data from a compact Vaisala weather transmitter retrieved directly on the PC by dedicated software. Therefore, the ASCII data format is different but can be also divided into a header and a data section.
The header section provides information about the following parameters: 1. requesting program name and version, 2. date and starting time of the measurements in this file, 3. sensor type, and 4. sampling rate.
After this section, the data section follows with the time of the measurement. All values are comma-separated but are divided into several lines depending on the meteorological parameter. A detailed description of all parts of the data format can be found in the data format specification (Schöne et al., 2020a) which is part of the supporting material.

Outlook
To monitor the quality of the sensor data prior to their use in computation of climate variables, basic QC procedures should be applied. In accordance with international guidelines on QC procedures (WMO, 2017(WMO, , 2004(WMO, , 2018a) different levels of QC procedures are suggested and should be consid-ered before using the data. The provided data can be seen as raw data without any QC implied. We recommend performing the following QC steps before using the data: 1. Integrity and syntax check.
Test to search for gross errors in the data (e.g. transmission or data storage errors like wrong characters).

Plausibility check (tolerance test for each sensor).
All instantaneous values should be checked against configurable range limits (e.g. sensor range limit specification). These limits are different for each meteorological or hydrological parameter.

Time consistency check.
Check the rate of change from the previous value, to test for the maximum allowed variability.
Check the rate of change from the previous values, to test for the minimum required variability.

Internal consistency check.
Test to check parameters against each other for plausibility.
Initial efforts have already been made to implement the first two tests in the SDSS, but the remaining tests have not been developed yet. Additionally, the authors intend to prepare a publication of a quality controlled dataset at a later time.

Data availability
The data described in this paper will be made publicly available as monthly and yearly data files separated for each station with the DOI https://doi.org/10.5880/GFZ.1.2.2020.002 (Zech et al., 2020). Additionally, the near-real-time data can be displayed and downloaded without any registration from the user interface SDSS at http://sdss.caiag.kg (last access: 22 February 2021).

Summary
In Central Asia, access to hydrometeorological data especially from remote areas is still limited. Within the CAWa project funded by the German Federal Foreign Office and with the support of the Global Change Observatory Central Asia (GCO-CA, GFZ) and the ACROSS (Helmholtz Association) initiative, the Remotely Operated Multi-Parameter Station (ROMPS) network has been installed in Kyrgyzstan, Tajikistan, Uzbekistan and Afghanistan. The technical concept has proven to withstand harsh and varying climate conditions without the necessity of permanent human interaction. The data presented in this paper are the result of the operation of these stations in the past 10 years. The stations provide raw hydrometeorological information such as air temperature, relative humidity, air pressure, wind speed and direction, precipitation, solar radiation, soil moisture, and soil temperature as well as snow and river discharge information where available. The data can be used for different applications ranging from scientific investigations of climate change, ground-truthing of remote-sensing-based technologies and improvement of weather forecasts to more politically based decisions on water management considerations and climate adaption strategies.

Supporting material
The supporting material to this article consists of the data format specification and the station documentation for each station. As most stations are operational, changes in these documents will occur but will be specified in the change log of each document. The supporting material is provided with the DOI https://doi.org/10.5880/GFZ.1.2.2020.002 (Zech et al., 2020).