The capacity of the Hopfield associative memory
IEEE Transactions on Information Theory
Cortical computational maps for auditory imaging
Neural Networks
An introduction to neural computing
An introduction to neural computing
Division and Square Root: Digit-Recurrence Algorithms and Implementations
Division and Square Root: Digit-Recurrence Algorithms and Implementations
Neuronal Networks of the Hippocampus
Neuronal Networks of the Hippocampus
A Product Family Approach to Graceful Degradation
DIPES '00 Proceedings of the IFIP WG10.3/WG10.4/WG10.5 International Workshop on Distributed and Parallel Embedded Systems: Architecture and Design of Distributed Embedded Systems
High-Radix Logarithm with Selection by Rounding
ASAP '02 Proceedings of the IEEE International Conference on Application-Specific Systems, Architectures, and Processors
Faithful Powering Computation Using Table Look-Up and a Fused Accumulation Tree
ARITH '01 Proceedings of the 15th IEEE Symposium on Computer Arithmetic
Pattern Classification (2nd Edition)
Pattern Classification (2nd Edition)
Calculation scheme based on a weighted primitive: application to image processing transforms
EURASIP Journal on Applied Signal Processing
Mathematical and Computer Modelling: An International Journal
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This paper presents a new approach to the problem of modelling living system dynamics. Our point of view claims the fact that behind the biological apparent complexity, a hidden simplicity may appear when a suitable modelling is developed. The framework is inspired on the computing features of biological systems by involving a set of elementary standard behaviours that can be combined in order to emulate more complex behaviours. The algebraic formalization is based on both a recursive primitive operation defined by a table which models the elementary behaviours and a multilevel operating mode that carries out behaviour combinations. A parametric architecture implements the model, providing a good trade-off between time delay calculation and memory requirements. In this paper, the simulation of neural subsystems is considered as an application. The comparison with other simulation techniques outlines the capabilities of our method to provide an accurate modelling together with a very simple circuit implementation.