Estimation of the carbon footprint for telecommunications and electronics products has become a key design activity. Improvement in carbon footprint must be demonstrated consistently on all new products. Current methods of providing a useful estimate are laborious and time-consuming. A simplified approach is described, which uses basic statistical methods for estimation and promises significant improvements over existing methods.
Issue Section:
Technical Briefs
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.Copyright © 2010
by American Society of Mechanical Engineers
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