We have applied tailor-made neural networks to the post-linearization of no
nlinear systems containing memory The problems we address involve tracking
systems that contain linear dynamics together with memoryless, nonlinear se
nsors and amplifiers. In general, the goal is to accurately infer a system'
s inputs based only on the system's outputs, which have been corrupted by n
onlinear components. The linearizing neural network is trained to emulate t
he inverse of the Volterra operator which describes the nonlinear system. I
n implementation, the network estimates the original input signal from the
system's output sequence. The post-linearizing network architecture is dete
rmined from an approximate model of the system to be linearized. The networ
k is trained with test signals that excite the tracking system over its dom
ain of operation and expose much of its nonlinear behavior Network weights
and biases are adjusted using a novel algorithm, batch backpropagation-thro
ugh-time (BBTT). This paper presents a test case involving a sensor with an
input-output relation similar to that of a scaled dc SQUID. The sensor and
amplifier nonlinearities are embedded within a fourth-order dynamic system
with negative feedback. The problem is generally formulated and we discuss
the application of our methodology to a variety of nonlinear sensing and a
mplification systems.