Earth Networks ENcast 6- Day Hourly Lat- Lon Forecast Feed

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Earth Networks ENcast 6- Day Hourly Lat- Lon Forecast Feed Introduction: The Earth Networks ENcast 6- Day Hourly Lat- Lon Forecast Feed will provide you with a variety of hourly forecast variables up to 6 days in the future that will help your organization make informed decisions. The data for the ENcast 6- Day Hourly Lat- Lon Forecast Feed will be updated hourly, utilizing data from Earth Networks vast network of weather stations. This model output will be sent into the ENcast engine and made available to you, usually no later than 30 minutes past the hour. Forecast Data Access: Earth Networks will provide access to the ENcast 6- Day Hourly Lat- Lon Forecast Feed via the following domain name: Please use your Pulse API Subscritpion Key with information provided below. The following is an example call for two locations: https://earthnetworks.azure- api.net/pointforecastfeed/v2/pointforecast/6day?locationids=colu001,colu002&subscription- key=zngqtcidjfapkx1dp82u7h8aposf Variable Field Variable Name Units Metric Format LocationId Location ID Text 4 or 5 (s or Min Max Precision 4 or 5 (s or Latitude Latitude Degrees +/- XX.XXXX - 90 90.0001 Longitude Longitude Degrees +/- XXX.XXXX - 180 180.0001 ModelRunDateTimeUtc Model Run Date/Time ValidPeriodDateTimeUtc Valid Date/Time TemperatureC Temperature Deg C Decimal - 100 150.1 WindDirectionDegreesFromNorth Wind Direction 0-359 Whole 0 359 Whole WindSpeedMps Wind Speed mps Decimal 0 200.1 DewPointC Dew Point Deg C Decimal - 100 150.1 CloudCoverPercentage Cloud Cover % Whole PrecipitationOneHourProbability 1hr Precipitation % Whole EN.PM.UM78 20151026 Page 1 of 10

PrecipitationOneHourAccumulatedMm Probability 1hr Accumulated Precipitation ThunderstormProbability Thunderstorm Probability % Whole mm Decimal 0 100.01 VisibilityKm Visibility km Decimal 0 50.1 WindChillC Wind Chill Deg C Decimal - 100 150.1 HeatIndexC Heat Index Deg C Decimal - 100 150.1 SfcPres Pressure Mb Whole 800 1100 Whole Data Delivery: The ENcast 6- Day Hourly Lat- Lon Forecast will be available through Representational State Transfer, also known as REST. This is an efficient and guaranteed delivery method utilizing web service (HTTP) explicitly where you can choose a file type, structure, and data variables from a menu of options. The forecast data will be available through REST in JavaScript Object Notification (JSON) format. Forecast Variables: Table 1 that follows outlines the variables contained within the ENcast 6- Day Hourly Lat- Lon Forecast Feed Version 2. Table 1: The Earth Networks ENCast 6- Day Hourly Lat/Lon Point Forecast Variables- Version 2 Quality Control: Please note that extensive quality control measures of the data will be implemented to ensure that data values are reasonable in the ENcast 6- Day Hourly Lat- Lon Forecast files. While rare, it is possible that data may occasionally be missing in the forecast file. This is most likely to occur in the extended forecast range because there are only 2 models the GFS and ECMWF that contribute to the forecast in the longer range. Any missing data will be denoted by a null space in the file. A null space is defined as being this: Null =,, The following variables will never have null spaces: SensorId Latitude Longitude ModelRunTime Valid PeriodTime Monitoring & Notifications: As mentioned above, the ENcast 6- Day Hourly Lat- Lon Forecast Feed will be made available to you no later than about 30 minutes past the hour. If a 6- Day ENcast Hourly Lat- Lon Forecast is not received in our system by this time, a message will be delivered, alerting you of the issue. Our support team will work diligently to remedy this. Upon successful resolution of the issue, you will receive also receive a communication e- mail. EN.PM.UM78 20151026 Page 2 of 10

Earth Networks ENcast 6- Day Hourly Sensor Forecast Feed Introduction: The Earth Networks ENcast 6- Day Hourly Sensor Forecast Feed will provide you with a variety of hourly forecast variables up to 6 days in the future that will help your organization make informed decisions. The data for the ENcast 6- Day Hourly Sensor Forecast Feed will be updated hourly, utilizing data from Earth Networks vast network of weather stations. This model output will be sent into the ENcast engine and made available to you, usually no later than 30 minutes past the hour. Forecast Data Access: Earth Networks will provide access to the ENcast 6- Day Hourly Sensor Forecast Feed via the following domain name: Please use your Pulse API Subscritpion Key with information provided below. The following is an example call for non- Earth Network Sensors: https://earthnetworks.azure- api.net/forecastfeed/v1/sensorforecast6day?sensorids=pacv,kbdl&subscription- key=265ef265ec569a79f468df98d760a46 The following is an example call for Earth Network Sensors: https://earthnetworks.azure- api.net/forecastfeed/v1/sensorforecast6day?sensorids=en.awshq,en.enhq1&subscr iption- key=265ef265ec569a79f468df98d760a46 Note: the format for Earth Networks stations is EN.<5 character site ID> Data Delivery: The ENcast 6- Day Hourly Sensor Forecast will be available through Representational State Transfer, also known as REST. This is an efficient and guaranteed delivery method utilizing web service (HTTP) explicitly where you can choose a file type, structure, and data variables from a menu of options. The forecast data will be available through REST in JavaScript Object Notification (JSON) format. Forecast Variables: Table 2 that follows outlines the variables contained within the ENcast 6- Day Hourly Sensor Forecast Feed Version 2. Table 2: The Earth Networks ENcast 6- Day Hourly Sensor Forecast Variables Version 2 Variable Field Variable Name Units Metric Format SensorId Sensor ID Text 4 or 5 (s or Min Max Precision 4 or 5 (s or EN.PM.UM78 20151026 Page 3 of 10

Latitude Latitude Degrees +/- XX.XXXX - 90 90.0001 Longitude Longitude Degrees +/- XXX.XXXX - 180 180.0001 ModelRunDateTimeUtc Model Run Date/Time ValidPeriodDateTimeUtc Valid Date/Time TemperatureC Temperature Deg C Decimal - 100 150.1 TemperatureMaxC 24hr High Temperature Deg C Decimal - 100 150.1 TemperatureMinC 24hr Low Temperature Deg C Decimal - 100 150.1 WindDirectionDegreesFromNorth Wind Direction 0-359 Whole 0 359 Whole WindSpeedMps Wind Speed mps Decimal 0 200.1 DewPointC Dew Point Deg C Decimal - 100 150.1 CloudCoverPercentage Cloud Cover % Whole PrecipitationOneHourProbability PrecipitationOneHourAccumulatedMm 1hr Precipitation Probability 1hr Accumulated Precipitation % Whole FogProbability Fog Probability % Whole ThunderstormProbability Thunderstorm Probability % Whole mm Decimal 0 100.01 VisibilityKm Visibility km Decimal 0 50.1 RainProbability Rain Probability % Whole IceProbability Ice Probability % Whole SnowProbability Snow Probability % Whole SurfacePressureHpa Surface Pressure HPa Decimal 0 1200.1 MeanSeaLevelPressureHpa Mean Sea Level Pressure HPa Decimal 0 1200.1 SurfaceInsolationWm2 Forecasted Sfc Insolation W/m2 Decimal 0 1100.1 RelativeHumidityPercentage Relative Humidity % Decimal 0 100.1 WindChillC Wind Chill Deg C Decimal - 100 150.1 HeatIndexC Heat Index Deg C Decimal - 100 150.1 WindGustMps Wind Gust mps Decimal 0 200.1 WetBulbC Wet Bulb Deg C Decimal - 100 150.1 Quality Control: Please note that extensive quality control measures of the data will be implemented to ensure that data values are reasonable in the ENcast 6- Day Hourly Sensor Forecast files. While rare, it is possible that data may occasionally be missing in the forecast file. This is most likely to occur in the extended forecast range because there are only 2 models the GFS and ECMWF that contribute to the forecast in the longer range. Any missing data will be denoted by a null space in the file. EN.PM.UM78 20151026 Page 4 of 10

1. A null space is defined as being this: Null =,, 2. The following variables will never have null spaces: SensorId Latitude Longitude ModelRunTime Valid PeriodTime Monitoring & Notifications: As mentioned above, the ENcast 6- Day Hourly Sensor Forecast Feed will be made available to you no later than about 30 minutes past the hour. If a 6- Day ENcast Hourly Sensor Forecast is not received in our system by this time, a message will be delivered, alerting you of the issue. Our support team will work diligently to remedy this. Upon successful resolution of the issue, you will receive also receive a communication e- mail. EN.PM.UM78 20151026 Page 5 of 10

Earth Networks ENcast 15-Day Hourly Lat-Lon Forecast Feed Introduction: The Earth Networks ENcast 15-Day Hourly Lat-Lon Forecast Feed will provide you with a variety of hourly forecast variables up to 15 days in the future that will help your organization make informed decisions. The data for the ENcast 15-Day Hourly Lat-Lon Forecast Feed will be updated two times daily, following the completion of the UTC and 12:00 UTC model runs of the GFS, ECMWF, and ENSEMBLE models. This model output will be sent into the ENcast engine. The UTC ENcast 15-Day Hourly Lat-Lon Forecast Feed will be available daily by 09:30 UTC while the 12:00 UTC ENcast 15-Day Hourly Lat-Lon Forecast Feed will be available daily by 21:30 UTC. Forecast Data Access: Earth Networks will provide access to the ENcast 15-Day Hourly Lat-Lon Forecast Feed via the following domain name: Please use your Pulse API Subscritpion Key with information provided below. The following is an example call for two locations: https://earthnetworks.azure- api.net/pointforecastfeed/v2/pointforecast/15day?locationids=colu001,colu002&su bscription- key=adgheccdfbvwsx Data Delivery: The ENcast 15-Day Hourly Lat-Lon Forecast will be available through Representational State Transfer, also known as REST. This is an efficient and guaranteed delivery method utilizing web service (HTTP) explicitly where you can choose a file type, structure, and data variables from a menu of options. The forecast data will be available through REST in JavaScript Object Notification (JSON) format. Forecast Variables: Table 1 that follows outlines the variables contained within the ENcast 15-Day Hourly Lat-Lon Forecast Feed Version 2. Table 1: The Earth Networks ENCast 15- Day Hourly Lat/Lon Point Forecast Variables- Version 2 Variable Field Variable Name Units Metric Format LocationId Location ID Text 4 or 5 (s or Min Max Precision 4 or 5 (s or Latitude Latitude Degrees +/- XX.XXXX - 90 90.0001 Longitude Longitude Degrees +/- XXX.XXXX - 180 180.0001 ModelRunDateTimeUtc Model Run Date/Time ValidPeriodDateTimeUtc Valid Date/Time TemperatureC Temperature Deg C Decimal - 100 150.1 WindDirectionDegreesFromNorth Wind Direction 0-359 Whole 0 359 Whole EN.PM.UM78 20151026 Page 6 of 10

WindSpeedMps Wind Speed mps Decimal 0 200.1 DewPointC Dew Point Deg C Decimal - 100 150.1 CloudCoverPercentage Cloud Cover % Whole PrecipitationOneHourProbability PrecipitationOneHourAccumulatedMm 1hr Precipitation Probability 1hr Accumulated Precipitation % Whole ThunderstormProbability Thunderstorm Probability % Whole mm Decimal 0 100.01 VisibilityKm Visibility km Decimal 0 50.1 WindChillC Wind Chill Deg C Decimal - 100 150.1 HeatIndexC Heat Index Deg C Decimal - 100 150.1 RelativeHumidityPercentage Relative Humidity % Whole 0 100.1 Details regarding precipitation probability values: The data has two items dealing with precipitation probability. PrecipitationOneHourProbability 1hr Precipitation Probability This value is the probability that any type of precipitation will occur ThunderstormProbability Thunderstorm Probability This value is the probability that if precipitation occurs, there will be thunder Quality Control: Please note that extensive quality control measures of the data will be implemented to ensure that data values are reasonable in the ENcast 15-Day Hourly Lat-Lon Forecast files. While rare, it is possible that data may occasionally be missing in the forecast file. This is most likely to occur in the extended forecast range because there are only 2 models the GFS and ECMWF that contribute to the forecast in the longer range. Any missing data will be denoted by a null space in the file. A null space is defined as being this: Null =,, The following variables will never have null spaces: SensorId Latitude Longitude ModelRunTime Valid PeriodTime Monitoring & Notifications: As mentioned above, the ENcast 15-Day Hourly Lat-Lon Forecast Feed will be made available to you no later than the following times: UTC model run: available by 09:30 UTC 12:00 UTC model run: available by 21:30 UTC If a 15-Day ENcast Hourly Lat-Lon Forecast is not received in our system by 09:30 UTC (for the UTC model run) and 21:30 UTC, a message will be delivered, alerting you of the issue. Our support team will work diligently to remedy this. Upon successful resolution of the issue, you will receive also receive a communication e-mail. EN.PM.UM78 20151026 Page 7 of 10

Earth Networks ENcast 15-Day Hourly Sensor Forecast Feed Introduction: The Earth Networks ENcast 15-Day Hourly Sensor Forecast Feed will provide you with a variety of hourly forecast variables up to 15 days in the future that will help your organization make informed decisions. The data for the ENcast 15-Day Hourly Sensor Forecast Feed will be updated two times daily, following the completion of the UTC and 12:00 UTC model runs of the GFS, ECMWF, and ENSEMBLE models. This model output will be sent into the ENcast engine. The UTC ENcast 15-Day Hourly Sensor Forecast Feed will be available daily by 09:30 UTC while the 12:00 UTC ENcast 15-Day Hourly Sensor Forecast Feed will be available daily by 21:30 UTC. Forecast Data Access: Earth Networks will provide access to the ENcast 15-Day Hourly Sensor Forecast Feed via the following domain name: Please use your Pulse API Subscritpion Key with information provided below. The following is an example call for non- Earth Network Sensors: https://earthnetworks.azure- api.net/forecastfeed/v2/sensorforecast15day?sensorids=pacv,kbdl&subscription- key=zngqtcidjfapkx1dp82u7h8aposf The following is an example call for Earth Network Sensors: https://earthnetworks.azure- api.net/forecastfeed/v2/sensorforecast15day?sensorids=en.awshq,en.enhq1&subscription- key=zngqtcidjfapkx1dp82u7h8aposf Note: the format for Earth Networks Stations is EN.<5 character site ID> Data Delivery: The ENcast 15-Day Hourly Sensor Forecast will be available through Representational State Transfer, also known as REST. This is an efficient and guaranteed delivery method utilizing web service (HTTP) explicitly where you can choose a file type, structure, and data variables from a menu of options. The forecast data will be available through REST in JavaScript Object Notification (JSON) format. Forecast Variables: Table 2 that follows outlines the variables contained within the ENcast 15-Day Hourly Sensor Forecast Feed Version 2. Table 1: The Earth Networks ENcast 15-Day Hourly Sensor Forecast Variables Version 2 Variable Field Variable Name Units Metric Format SensorId Sensor ID Text 4 or 5 (s or Min Max Precision 4 or 5 (s or EN.PM.UM78 20151026 Page 8 of 10

Latitude Latitude Degrees +/- XX.XXXX - 90 90.0001 Longitude Longitude Degrees +/- XXX.XXXX - 180 180.0001 ModelRunDateTimeUtc Model Run Date/Time ValidPeriodDateTimeUtc Valid Date/Time TemperatureC Temperature Deg C Decimal - 100 150.1 TemperatureMaxC 24hr High Temperature Deg C Decimal - 100 150.1 TemperatureMinC 24hr Low Temperature Deg C Decimal - 100 150.1 WindDirectionDegreesFromNorth Wind Direction 0-359 Whole 0 359 Whole WindSpeedMps Wind Speed mps Decimal 0 200.1 DewPointC Dew Point Deg C Decimal - 100 150.1 CloudCoverPercentage Cloud Cover % Whole PrecipitationOneHourProbability PrecipitationOneHourAccumulatedMm 1hr Precipitation Probability 1hr Accumulated Precipitation % Whole FogProbability Fog Probability % Whole ThunderstormProbability Thunderstorm Probability % Whole mm Decimal 0 100.01 VisibilityKm Visibility km Decimal 0 50.1 RainProbability Rain Probability % Whole IceProbability Ice Probability % Whole SnowProbability Snow Probability % Whole SurfacePressureHpa Surface Pressure HPa Decimal 0 1200.1 MeanSeaLevelPressureHpa Mean Sea Level Pressure HPa Decimal 0 1200.1 SurfaceInsolationWm2 Forecasted Sfc Insolation W/m2 Decimal 0 1100.1 RelativeHumidityPercentage Relative Humidity % Decimal 0 100.1 WindChillC Wind Chill Deg C Decimal - 100 150.1 HeatIndexC Heat Index Deg C Decimal - 100 150.1 WindGustMps Wind Gust mps Decimal 0 200.1 WetBulbC Wet Bulb Deg C Decimal - 100 150.1 RelativeHumidityPercentage Relative Humidity % Whole Details regarding precipitation probability values: 0 100.1 The data has several items dealing with precipitation probability. PrecipitationOneHourProbability 1hr Precipitation Probability ThunderstormProbability Thunderstorm Probability This value is the probability that any type of precipitation will occur This value is the probability that if precipitation occurs, there will be thunder RainProbability Rain Probability This value is the probability that if precipitation occurs, it will be rain EN.PM.UM78 20151026 Page 9 of 10

IceProbability Ice Probability This value is the probability that if precipitation occurs, it will be freezing rain or sleet SnowProbability Snow Probability This value is the probability that if precipitation occurs, it will be snow Quality Control: Please note that extensive quality control measures of the data will be implemented to ensure that data values are reasonable in the ENcast 15-Day Hourly Sensor Forecast files. While rare, it is possible that data may occasionally be missing in the forecast file. This is most likely to occur in the extended forecast range because there are only 2 models the GFS and ECMWF that contribute to the forecast in the longer range. Any missing data will be denoted by a null space in the file. A null space is defined as being this: Null =,, The following variables will never have null spaces: SensorId Latitude Longitude ModelRunTime Valid PeriodTime Monitoring & Notifications: As mentioned above, the ENcast 15-Day Hourly Sensor Forecast Feed will be made available to you no later than the following times: UTC model run: available by 09:30 UTC 12:00 UTC model run: available by 21:30 UTC If a 15-Day ENcast Hourly Sensor Forecast is not received in our system by 09:30 UTC (for the UTC model run) and 21:30 UTC, a message will be delivered, alerting you of the issue. Our support team will work diligently to remedy this. Upon successful resolution of the issue, you will receive also receive a communication e-mail. EN.PM.UM78 20151026 Page 10 of 10