Refined methods for the construction of a deterministic dynamical syst
em which can consistently reproduce observed aperiodic data are discus
sed. The determination of the dynamics underlying a noisy chaotic time
series suffers strongly from two systematic errors: One is a conseque
nce of the so-called ''error-in-variables problem.'' Standard least-sq
uares fits implicitly assume that the independent variables are noise
free and that the dependent variable is noisy. We show that due to the
violation of this assumption one receives considerably wrong results
for moderate noise levels. A straightforward modification of the cost
function solves this problem. The second problem consists in a mutual
inconsistency between the images of a point under the model dynamics a
nd the corresponding observed values. For an improved fit we therefore
introduce a multistep prediction error which exploits the information
stored in the time series in a better way. The performance is demonst
rated by several examples, including experimental data. (C) 1996 Ameri
can Institute of Physics.