The Word-Level Models for Efficient Computation of Multiple-Valued Functions. PART 2: LWL Based Model
نویسندگان
چکیده
This paper is a continuation of the study of NeuralLike Networks (NLNs) for computation of MultipleValued Logic (MVL) functions. NLN is defined as a feedforward network with no learning. In contrast to classical neural network with Threshold Gates (TGs), the proposed NLN is built of so-called Neuron-Like Gates (NLGs). It was shown in our previous study that NLG is modelled by a Linear Arithmetical expression (LAR). In this paper we show even more simple NLG model. We have developed two word-level models, Linear Weighted Logic expressions (LWLs) and a corresponding set of Linear Decision Diagrams (LDDs). We compare the LWLand LAR-based NLNs. The experimental study on large MVL circuits shows that the number of nodes in the LDDs derived from LWLs is four times less in average compared to those derived from LARs. They are also 2-7 times more compact (require less memory to store the terminal values).
منابع مشابه
The Word-Level Models for Efficient Computation of Multiple-Valued Functions. PART 1: LAR Based Model
A new model of a multi-level combinational Multiple-Valued Logic (MVL) circuit with no feedback and no learning is introduced. This model includes Neuron-Like Gates (NLGs), each represents a level of the MVL circuit, so that the number of NLGs in the corresponding Neural-Like Network (NLN) is equal to the number of levels in the circuit. The formal description of an NLG is a Linear Arithmetic E...
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