5,787 research outputs found
Potentiometric determination of the gibbs energies of formation of lead aluminates
The Gibbs energies of formation of three compounds in the PbOAl2O3 systemâ2PbO·Al2O3, PbOAl2O3 , and PbO· 6A1203âhave been determined from potentiometric measurements on reversible solidâstate galvanic cells
Pt, Ir I Pb,αAl2O3, PbO ·6A1203 I ZrO2CaO I NiO, Ni I Pt
Pt I NiO, Ni I ZrO2CaO I Pb, PbO·6A1203, PbO· A1203 I It, Pt
and
Pt I NiO, Ni I ZrO2CaO I Pb, PbO·A12O3, 2PbO·Al2O3 It, Pt
in the temperature range 850â1375 K. The results are discussed in the light of reported phase diagrams for the PbOA1203 system. The partial pressures of different lead oxide species, PbnOn, n = 1−6, in the gas phase in equilibrium with the aluminates are calculated by combining the results of this study with the massâspectrometric data of Drowart et al.(1) for polymerization equilibria in the gas phase. The concentration of oxygen in lead in equilibrium with the aluminates are also derived from the results and the literature data on the Gibbs energy of solution of oxygen in liquid lead
Single Gate P-N Junctions in Graphene-Ferroelectric Devices
Graphene's linear dispersion relation and the attendant implications for
bipolar electronics applications have motivated a range of experimental efforts
aimed at producing p-n junctions in graphene. Here we report electrical
transport measurements of graphene p-n junctions formed via simple
modifications to a PbZrTiO substrate, combined with a
self-assembled layer of ambient environmental dopants. We show that the
substrate configuration controls the local doping region, and that the p-n
junction behavior can be controlled with a single gate. Finally, we show that
the ferroelectric substrate induces a hysteresis in the environmental doping
which can be utilized to activate and deactivate the doping, yielding an
`on-demand' p-n junction in graphene controlled by a single, universal
backgate
Chaotic exploration and learning of locomotion behaviours
We present a general and fully dynamic neural system, which exploits intrinsic chaotic dynamics, for the real-time goal-directed exploration and learning of the possible locomotion patterns of an articulated robot of an arbitrary morphology in an unknown environment. The controller is modeled as a network of neural oscillators that are initially coupled only through physical embodiment, and goal-directed exploration of coordinated motor patterns is achieved by chaotic search using adaptive bifurcation. The phase space of the indirectly coupled neural-body-environment system contains multiple transient or permanent self-organized dynamics, each of which is a candidate for a locomotion behavior. The adaptive bifurcation enables the system orbit to wander through various phase-coordinated states, using its intrinsic chaotic dynamics as a driving force, and stabilizes on to one of the states matching the given goal criteria. In order to improve the sustainability of useful transient patterns, sensory homeostasis has been introduced, which results in an increased diversity of motor outputs, thus achieving multiscale exploration. A rhythmic pattern discovered by this process is memorized and sustained by changing the wiring between initially disconnected oscillators using an adaptive synchronization method. Our results show that the novel neurorobotic system is able to create and learn multiple locomotion behaviors for a wide range of body configurations and physical environments and can readapt in realtime after sustaining damage
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