Residential Demand Module
[7] The Model Documentation Report contains additional details concerning
model structure and operation. Refer to Energy Information Administration,
Model Documentation Report: Residential Sector Demand Module of the National
Energy Modeling System, DOE/EIA-M065(2005), (April 2005).
[8] Among the explanations often mentioned for observed high average
implicit discount rates are: market failures, (i.e., cases where incentives
are not properly aligned for markets to result in purchases based on
energy economics alone); unmeasured technology costs (i.e., extra costs
of adoption which are not included or difficult to measure like employee
down-time); characteristics of efficient technologies viewed as less desirable
than their less efficient alternatives (such as equipment noise levels
or lighting quality characteristics); and the risk inherent in making irreversible
investment decisions. Examples of market failures/barriers include: decision
makers having less than complete information, cases where energy equipment
decisions are made by parties not responsible for energy bills (e.g., landlord/tenants,
builders/home buyers), discount horizons which are truncated (which might
be caused by mean occupancy times that are less than the simple payback
time and that could possibly be classified as an information failure),
and lack of appropriate credit vehicles for making efficiency investments,
to name a few. The use of high implicit discount rates in NEMS merely
recognizes that such rates are typically found to apply to energy-efficiency
investments.
[9] U.S. Bureau of Census, Series C25 Data from various years of publications.
[10] Sources: U.S. Bureau of Census, Annual Housing Survey 2001 and Professional
Remodler, 2002 Home Remodeling Study.
[11] See DAHL, CAROL, A Survey of Energy Demand Elasticities in Support
of the Development of the NEMS, October 1993.
[12] The IECC established guidelines for builders to meet specific targets
concerning energy efficiency with respect to heating and cooling load.
[13] The high technology assumptions are based on Energy Information Administration,
Technology Forecast Updates-Residential and Commercial Building technologies-Advanced
Adoption Case (Navigant Consulting, September 2004).
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