channel allocation policy
Reinforcement Learning for Dynamic Channel Allocation in Cellular Telephone Systems
In cellular telephone systems, an important problem is to dynami(cid:173) cally allocate the communication resource (channels) so as to max(cid:173) imize service in a stochastic caller environment. This problem is naturally formulated as a dynamic programming problem and we use a reinforcement learning (RL) method to find dynamic channel allocation policies that are better than previous heuristic solutions. The policies obtained perform well for a broad variety of call traf(cid:173) fic patterns. In cellular communication systems, an important problem is to allocate the com(cid:173) munication resource (bandwidth) so as to maximize the service provided to a set of mobile callers whose demand for service changes stochastically. A given geograph(cid:173) ical area is divided into mutually disjoint cells, and each cell serves the calls that are within its boundaries (see Figure 1a).
Reinforcement Learning for Dynamic Channel Allocation in Cellular Telephone Systems
Singh, Satinder P., Bertsekas, Dimitri P.
In cellular telephone systems, an important problem is to dynamically allocate the communication resource (channels) so as to maximize service in a stochastic caller environment. This problem is naturally formulated as a dynamic programming problem and we use a reinforcement learning (RL) method to find dynamic channel allocation policies that are better than previous heuristic solutions. The policies obtained perform well for a broad variety of call traffic patterns.
Reinforcement Learning for Dynamic Channel Allocation in Cellular Telephone Systems
Singh, Satinder P., Bertsekas, Dimitri P.
In cellular telephone systems, an important problem is to dynamically allocate the communication resource (channels) so as to maximize service in a stochastic caller environment. This problem is naturally formulated as a dynamic programming problem and we use a reinforcement learning (RL) method to find dynamic channel allocation policies that are better than previous heuristic solutions. The policies obtained perform well for a broad variety of call traffic patterns.
Reinforcement Learning for Dynamic Channel Allocation in Cellular Telephone Systems
Singh, Satinder P., Bertsekas, Dimitri P.
In cellular telephone systems, an important problem is to dynamically allocatethe communication resource (channels) so as to maximize servicein a stochastic caller environment. This problem is naturally formulated as a dynamic programming problem and we use a reinforcement learning (RL) method to find dynamic channel allocation policies that are better than previous heuristic solutions. The policies obtained perform well for a broad variety of call traffic patterns.We present results on a large cellular system with approximately 49