S. Bennis et al., IMPROVING SINGLE-VARIABLE AND MULTIVARIABLE TECHNIQUES FOR ESTIMATINGMISSING HYDROLOGICAL DATA, Journal of hydrology, 191(1-4), 1997, pp. 87-105
A highly efficient technique is developed to obtain the best least-squ
ares approximation of the missing hydrological data in the single-vari
able case, and this is presented here, The technique is based on an ap
propriate weighing of the estimated values generated by two autoregres
sive processes operating, respectively, in the forward and backward di
rections of time. For the multivariable case, the originality of the w
ork presented here consists in the use of the linear regression model
with variable coefficients to estimate missing data, As for the single
-variable case, two multivariable regression models are calibrated rec
ursively on available data preceding and following the period of missi
ng data. The use of Kalman filter (KF) has improved the accuracy in th
e estimation of the first missing data including the peak flow. For su
bsequent missing data the confidence of the estimates is greater when
using a static model identified by the ordinary least squares (OLS) te
chnique, It has been found that there is a critical rank for which the
re is an inversion of performance between the KF and OLS technique. Wh
en the period of missing data is smaller than the critical rank we use
only KF technique, When the period of missing data extends past the c
ritical rank, it is recommended that KF be used to estimate the first
missing data and then use OLS technique to estimate data coming after
the critical rank. (C) 1997 Elsevier Science B.V.