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Combating Zone Creep with Big Data Inga Haugen MIS Candidate, University of Tennessee, Knoxville, SciData Scholar. Introduction. The Technology: Big Data. The Solution? Combating , Communicating, And Connecting. The Problem: Zone Creep.
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Combating Zone Creep with Big Data Inga Haugen MIS Candidate, University of Tennessee, Knoxville, SciData Scholar Introduction The Technology: Big Data The Solution? Combating, Communicating, And Connecting The Problem: Zone Creep When this Minnesota farm girl first contemplated a move to Tennessee to start her graduate degree in information sciences, a personal concern was Tennessee doesn’t have “proper” winter to kill the bugs, and keep them from getting so big. My learned and instinctual responses will not work in a new biome. But some folk are facing this challenge without moving from their land, due to weather change. From an agriculture information professional’s perspective, this matters in terms of "zone creep" and other changes to ecosystems. It's an established fact that different crops work in different zones, and that new data shows a change in zones. One easy example from an animal health and crop perspective is that people need to be aware of new pests that will affect them, and become aware old ways of doing things don't necessarily work anymore. However, there is no reason to re-invent the wheel. Zones are creeping, but the data from zone “X” will be just as valid when it now applies 250-430 miles north1. One way to address this issue is thru the United States Department of Agriculture’s Plant Hardiness Zone Map. Plant Hardiness Zones, which also equate to pest and critter hardiness zones, too, are used for other uses, outside planting plants. For example, the USDA Risk Management Agency uses the USDA plant hardiness zone designations to set some crop insurance standards. Scientists use the plant hardiness zones as a data layer in many research models such as modeling the spread of exotic weeds and insects. Farmers (and place or location specific users) can use this map to request specific information that more closely matches the new understanding of weather conditions. Put in OLD MAP What is Big Data? In this context, amounts of data we could not track, manipulate and use previously. What is Long Data? Long Data is Big Data over time. The new USDA Plant Hardiness Zone Map is a visual representation of Big Data, Long Data, and expert input. This is one example of using Big Data to create more accurate tools for people to use. With the understanding of Zone Creep, any location-based enterprise, like a farm, can use this information to request specific information that will apply to the new zone. To combat the problem, we all need to communicate, and that takes connecting people with people, and people with information. Information professionals can use the parameters established to match established research to new areas that can benefit. Also, maintaining research could be avoided with better, more precise usage of Big and Long Data2. Figure #1 • What is Zone Creep? Zone Creep is the migration of the Plant Hardiness Zones from their previously established parameters. • By comparing the previous map to the new map, people can see how their zone may have moved. • Factors used in new USDA Plant Hardiness Zone Map: • The map is based on the average annual minimum winter temperature, divided into 10-degree F zones. • This version takes into account elevation, nearness to large bodies of water, and positions in terrian, like ridge tops or valleys • 30 years data vs 13 years for previous map Bibliography • http://www.nasa.gov/topics/earth/features/growth-shift.html • Sparger, John Adam, George W. Norton, Paul W. Heisey, and Jeffrey Alwang. “Is the Share of Agricultural Maintenance Research Rising in the United States?” Food Policy 38 (February 2013): 126–135. doi:10.1016/j.foodpol.2012.11.004. Figure #2