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Showcase Skiing Area
IOT Demolab Vienna – Rainer Bauer
2
© 2017 All rights reserved. Arrow Confidential and Proprietary
3
© 2017 All rights reserved. Arrow Confidential and Proprietary
4
© 2017 All rights reserved. Arrow Confidential and Proprietary
Problem
6:00am 5:00pm
Artificial snow production is
limited to a specific amount
of water usage in a Skiing
area.
How could the snow
production be optimized by
using environmental and
weather data
When,where and how much
snow do I have to produce to
cover the slopes.
5
© 2017 All rights reserved. Arrow Confidential and Proprietary
GIS and calculations
The foundation of our model is GIS, the Geographic Information System
GPS data is combined with available map information
For every data point a polygon is calculated and all points together make a
surface area.
This allows a fast recalculation if data points are
changing.
6
© 2017 All rights reserved. Arrow Confidential and Proprietary
Snow data
Height of snow is measured by Snowcats or fixed
sensors under the slopes
The datapoints are stored in a database. The surface
area is calculated using Voronoi-diagrams and stored
as GIS polygons.
7
© 2017 All rights reserved. Arrow Confidential and Proprietary
Weather data
Different weather data providers can be used
Automatic calculation is done every hour.
Values used:
• Temperature
• Rain
• Snow
Next version includes calaculation of evaporation using
• Air pressure
• Wind and direction
• Cloudiness
8
© 2017 All rights reserved. Arrow Confidential and Proprietary
Solution
6:00am 5:00pm
Simulation using weather
data allows to predict the
amount of snow which needs
to be produced
Saves energy, water and
labour and can extend the
skiing season.
9
© 2017 All rights reserved. Arrow Confidential and Proprietary
System info
1 VM 4 CPUs, 32 GB RAM, 250GB SSD
Netapp Filer
Splunk
Debian, PostGIS
Python, Apache, PHP
A complete rendering for the entire Skiing area Semmering-Hirschenkogel (8km) takes 30 sec.

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"Showcase Skiing Area" IoT Presentation - Splunk Partner Executive Summit: 18 Jan 2018

  • 1. Showcase Skiing Area IOT Demolab Vienna – Rainer Bauer
  • 2. 2 © 2017 All rights reserved. Arrow Confidential and Proprietary
  • 3. 3 © 2017 All rights reserved. Arrow Confidential and Proprietary
  • 4. 4 © 2017 All rights reserved. Arrow Confidential and Proprietary Problem 6:00am 5:00pm Artificial snow production is limited to a specific amount of water usage in a Skiing area. How could the snow production be optimized by using environmental and weather data When,where and how much snow do I have to produce to cover the slopes.
  • 5. 5 © 2017 All rights reserved. Arrow Confidential and Proprietary GIS and calculations The foundation of our model is GIS, the Geographic Information System GPS data is combined with available map information For every data point a polygon is calculated and all points together make a surface area. This allows a fast recalculation if data points are changing.
  • 6. 6 © 2017 All rights reserved. Arrow Confidential and Proprietary Snow data Height of snow is measured by Snowcats or fixed sensors under the slopes The datapoints are stored in a database. The surface area is calculated using Voronoi-diagrams and stored as GIS polygons.
  • 7. 7 © 2017 All rights reserved. Arrow Confidential and Proprietary Weather data Different weather data providers can be used Automatic calculation is done every hour. Values used: • Temperature • Rain • Snow Next version includes calaculation of evaporation using • Air pressure • Wind and direction • Cloudiness
  • 8. 8 © 2017 All rights reserved. Arrow Confidential and Proprietary Solution 6:00am 5:00pm Simulation using weather data allows to predict the amount of snow which needs to be produced Saves energy, water and labour and can extend the skiing season.
  • 9. 9 © 2017 All rights reserved. Arrow Confidential and Proprietary System info 1 VM 4 CPUs, 32 GB RAM, 250GB SSD Netapp Filer Splunk Debian, PostGIS Python, Apache, PHP A complete rendering for the entire Skiing area Semmering-Hirschenkogel (8km) takes 30 sec.