ESTIMATING WATER DEMAND DETERMINANTS AND FORECASTING WATER DEMAND FOR NZIOA CLUSTER SERVICES AREA
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Date
2015-08Author
Munialo, Patrick Wanyonyi
Onyancha, Carolyne K.
Ongo’r, Basil Tito Iro
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Show full item recordAbstract
The accuracy of water demand projections depends on the availability of
reliable population and water use data as well as an understanding of the
distribution of different types of users within the community. The underlying
problem for this study is that water demand in Kenya is based on the fact that
operational demand of drinking water is based on experience and appropriated
practices, rather than local empirical evidence. There is limited number of
analytical studies on water demand and supply reliability. In the face of limited
knowledge, per capita use statistics adapted from developed countries are applied
to estimate water consumption in Kenya, and most probably will fail to depict the
water use patterns. At the same time, there is the unknown component of
suppressed consumption induced scarcity and water quality problems. Almost
certainly, will release these constraints, will modify and disrupt the water demand
and design baseline. Finally it is crucial to establish time varying water
consumption patterns and the critical demand values. Correct prediction of these
factors determines the extent to which a network can satisfy critical demand and
maintain economic efficiency. The objective of this study was to model water
demand mathematically to determine the significance of water determinants for
systems design and operations management. To achieve this objective, a survey of
water usage in towns in Bungoma and Trans Nzoia counties was done. The
survey was done in Bungoma town and its environs, Webuye town and its
environs, kitale town and its environs of Nzoia Water Services clustered company
(NZOWASCO). Out of the sample size of 23,000 population a sample size of 517
consumers was chosen across the five categories of consumers namely; domestic,
low income, commercial, industrial and institutional. The presentation has
focused on development of water determinant for domestic and low income consumers. Out of 517 population, the Primary data was collected in the field by
use of structured questionnaire, whereas secondary data was collected from
secondary sources of NZOWASCO. The primary data was used to develop the
regression model. The secondary data was used for sensitivity tests and validation
of the regression model. The results of the model were presented in various forms
and compared with actual data for a period of 2005 and 2014. The model was
able to determine historical water demand and water forecasts for domestic and
low income consumers. The model generated values did not vary significantly
with actual data for historical water demand and forecasting.