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1. Objective and Approach <br /> <br />The objective of the research described in this relaort is to devclop water use forecasts for <br />the City of Redwood City (RWC) for the 20-year period 2000 to 2020. The resulting <br />water use forecasts can assist RWC with a variety of water planning decisions/functions, <br />including supporting the decision-making process underlying construction of water <br />r~y~ling facilities in the Redwood Shores are~ <br /> <br />A variety of methods are available to forecast water use. There are pros and cons <br />associated with each, and data availability is often an important selection determinant. <br />Previously, RWC has used simple extrapolation methods for water use forecasting. This <br />approach has minimal data and analytic requirements, but an extrapolation of the past is <br />not necessarily the best predictor of the future. <br /> <br />Because RWC has available several key sources of information regarding future drivers <br />of water use (e.g., housing units and employment), it is logical to make use of this <br />information as is done via the following single variable model: <br /> <br /> WATEt~,t -- DRIVER,,t * COEFFICIENT~t <br /> <br />where <br /> <br /> WATEI~t = water use of sector s in time t <br /> DRIVER~.t = data driver of sector s in time t <br /> COEFFICIENT,., = water use per driver coefficicnt of sector s in time t <br /> <br /> In RWC's case there are seven sectors identified in the billing system as follows: <br /> <br /> · single family residential <br /> · ' multiple family residential <br /> · commercial <br /> · commercial Irrigation <br /> · government. <br /> · other <br /> · residential irrigation <br /> <br /> As described in Section 2, the data drivers are number of housing units for the residential <br /> sectors, number of employees for the commercial sectors, and population for the other <br /> sectors. Section 3 describes the development of the coeffieiants that are based on <br /> histofieai water use correlations, as potentially adjusted for weather, water prices, and <br /> expected water conservation transformations. {2)nee the data driven and their associated <br /> coefficients are identified, water use foracasts over a 20-year period are developed as <br /> described in Section 4. Lastly, Section 5 describes sensitivity analyses of the water use <br /> forecasts to underlying assumptions. <br /> <br /> Page 3 <br /> <br /> <br />