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Comprehending Consumption: The Behavioral Basis and Implementation of Driver Feedback for Reducing Vehicle Energy Use

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  • Stillwater, Tai

Abstract

By easily comprehending their own energy consumption, individuals can make both individually and socially responsible choices. How and when that potential translates into actual choices is explored, first by using mile-per-gallon fuel economy as a metric for driver feedback and finding that the metric is unable to transmit accurate information about the impact of driving style on energy use. An alternative energy economy metric, the theory of planned behavior, is tested against driver responses to an existing feedback system available in the 2008 model Toyota Prius. It appears that driver responses support the use of behavioral theories to both measure and design feedback systems. A novel feedback design based on behavioral theories and drivers' responses to the feedback is presented. The quantitative results of a year long study of fuel economy in response to feedback finds the novel feedback design generates a statistically significant increase in fuel economy overall. The feedback also influences drivers' goals and attitudes. This finding supports the underlying behavioral theory and suggests that energy related behavioral decisions are dependent on the quality and behavioral relevance of information that people have about their choices and the resulting consequences.

Suggested Citation

  • Stillwater, Tai, 2011. "Comprehending Consumption: The Behavioral Basis and Implementation of Driver Feedback for Reducing Vehicle Energy Use," Institute of Transportation Studies, Working Paper Series qt2ns9p8h7, Institute of Transportation Studies, UC Davis.
  • Handle: RePEc:cdl:itsdav:qt2ns9p8h7
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    4. Kurani, Kenneth S. & Turrentine, Thomas S., 2002. "Marketing Clean and Efficient Vehicles: A Review of Social Marketing and Social Science Approaches," Institute of Transportation Studies, Working Paper Series qt2p923054, Institute of Transportation Studies, UC Davis.
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    Cited by:

    1. Stillwater, Tai & Kurani, Kenneth S., 2012. "Goal Setting, Framing, and Anchoring Responses to Ecodriving Feedback," Institute of Transportation Studies, Working Paper Series qt9k86f889, Institute of Transportation Studies, UC Davis.
    2. Stillwater, Tai & Kurani, Kenneth S., 2012. "Preliminary Results from a Field Experiment of Three Fuel Economy Feedback Designs," Institute of Transportation Studies, Working Paper Series qt11r5b3cs, Institute of Transportation Studies, UC Davis.

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