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Computer simulation results show that the proposed canceller can effectively reduce co-channel interference.
The results demonstrate that using co-channel may unworkable unless some intersystem interference mitigation techniques are applied.
Based on these interference results it is possible to develop a method for co-operative and/or non co-operative interference suppression.
Computer simulation results show that the proposed scheme can cancel the co-channel interference.
Some preliminary simulation results demonstrate that the AM method is effective and adaptive to non-stationary co-channel interference.
Simulation results show that in the case of strong co-channel interference, the proposed channel estimator achieves a significant performance improvement over a reference method.
This approach may have advantages in multi-user wireless communications where the co-channel interference condition is severe or the number of interferences is larger than the number of array elements.
These results are useful for the performance analysis of optimized multi-input-multi-output (MIMO) systems subject to co-channel interference.
These three techniques bring a new vision about interference in wireless networks and motivate a plethora of potential new applications and services.

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