for the temporal and spatial integration of incoming signals and for the signal propagation, while synapses are tasked with the variation of the input signal transmission according to learning paradigms such as the activity dependent plasticity (long term and short term plasticity) or the spike-timing dependent plasticity (STDP) algorithm. [2] This structural and functional organization enables the energy efficient and the massively parallel information processing that characterize neuronal networks.Artificial analogs of neurons and synapses can be implemented using traditional electronic elements fabricated with well-established CMOS technology. [3,4] However, these implementations require the use of a rather large number of elements, [5] limiting the effective realization of brain-like systems, especially considering the 3D organization and the possibility of rather long-distance connections. This is the reason why main efforts in the field of artificial neuron networks (one class of neuromorphic systems) were carried out mainly at the software level, limiting the mimicking of several features of brain, for instance, parallel information processing.Recently, a renovated interest in the hardware realization of neuromorphic systems and, in particular, artificial neuron networks [6,7] is due to the progress achieved in the implementation of resistance switching elements, [8][9][10] the so called memristive devices, [11] mimicking synapse properties at the level of single elements, and allowing the realization of neuron analogs. Different groups reported synaptic-like devices using nanoscale magnetic materials developing spintronic devices, [12,13] metal oxides, [14][15][16] or organic materials based on redox reactions [17][18][19] and ion permeation. [20][21][22] The increasing interest in organic materials demonstrating basic forms of neuroplasticity has recently driven the development of different approaches for reducing the operation voltage ranges [23,24] and for increasing the networks density. [25] Short term memory and adaptation functions have been reported in different organic devices [26][27][28][29] who demonstrated the capability of performing paired pulse facilitation or depression (PPF or PPD, respectively), while spatio-temporal neuronal integration has been demonstrated in devices with a multigate configuration [27] or in NbO x volatile memristors. [30] Organic electronics has recently emerged as a promising candidate for the emulation of brain-like functionalities, especially at the device level. Among the proposed technologies, memristive devices have gained an increasing attention due to their non-volatile behavior which makes them suitable for the implementation of artificial neuronal networks. However, most of them have an energy-costly switching mechanism which limits the approach of brain like energy efficiency. Different from them, organic memristive devices (OMDs) have a narrow switching window and implement neuromorphic characteristics at voltages ≤ 1 V. Despite OMDs potentialities in bi...