root/applications/dual/texts/pmsm_system.lyx @ 753

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1#LyX 1.6.4 created this file. For more info see http://www.lyx.org/
2\lyxformat 345
3\begin_document
4\begin_header
5\textclass scrartcl
6\begin_preamble
7\newcommand\blabl{}
8\end_preamble
9\use_default_options false
10\begin_modules
11theorems-ams
12theorems-ams-extended
13\end_modules
14\language english
15\inputencoding auto
16\font_roman lmodern
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48\defskip medskip
49\quotes_language english
50\papercolumns 1
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52\paperpagestyle default
53\tracking_changes false
54\output_changes false
55\author ""
56\author ""
57\end_header
58
59\begin_body
60
61\begin_layout Standard
62\begin_inset FormulaMacro
63\newcommand{\isa}[1]{i_{\alpha#1}}
64{i_{\alpha#1}}
65\end_inset
66
67
68\begin_inset FormulaMacro
69\newcommand{\isb}[1]{i_{\beta#1}}
70{i_{\beta#1}}
71\end_inset
72
73
74\begin_inset FormulaMacro
75\newcommand{\Dt}{\Delta t}
76{\Delta t}
77\end_inset
78
79
80\begin_inset FormulaMacro
81\newcommand{\om}{\omega}
82{\omega}
83\end_inset
84
85
86\begin_inset FormulaMacro
87\newcommand{\th}{\vartheta}
88{\vartheta}
89\end_inset
90
91
92\begin_inset FormulaMacro
93\newcommand{\usa}[1]{u_{\alpha#1}}
94{u_{\alpha#1}}
95\end_inset
96
97
98\begin_inset FormulaMacro
99\newcommand{\usb}[1]{u_{\beta#1}}
100{u_{\beta#1}}
101\end_inset
102
103
104\end_layout
105
106\begin_layout Title
107PMSM system description
108\end_layout
109
110\begin_layout Section
111Model of PMSM Drive
112\end_layout
113
114\begin_layout Standard
115Permanent magnet synchronous machine (PMSM) drive with surface magnets on
116 the rotor is described by conventional equations of PMSM in the stationary
117 reference frame:
118\begin_inset Formula \begin{align}
119\frac{d\isa{}}{dt} & =-\frac{R_{s}}{L_{s}}\isa{}+\frac{\Psi_{PM}}{L_{s}}\omega_{me}\sin\th+\frac{\usa{}}{L_{s}},\nonumber \\
120\frac{d\isb{}}{dt} & =-\frac{R_{s}}{L_{s}}\isb{}-\frac{\Psi_{PM}}{L_{s}}\omega_{me}\cos\th+\frac{\usb{}}{L_{s}},\label{eq:simulator}\\
121\frac{d\om}{dt} & =\frac{k_{p}p_{p}^{2}\Psi_{pm}}{J}\left(\isb{}\cos(\th)-\isa{}\sin(\th)\right)-\frac{B}{J}\om-\frac{p_{p}}{J}T_{L},\nonumber \\
122\frac{d\th}{dt} & =\omega_{me}.\nonumber \end{align}
123
124\end_inset
125
126Here,
127\begin_inset Formula $\isa{}$
128\end_inset
129
130,
131\begin_inset Formula $\isb{}$
132\end_inset
133
134,
135\begin_inset Formula $\usa{}$
136\end_inset
137
138 and
139\begin_inset Formula $\usb{}$
140\end_inset
141
142 represent stator current and voltage in the stationary reference frame,
143 respectively;
144\begin_inset Formula $\om$
145\end_inset
146
147 is electrical rotor speed and
148\begin_inset Formula $\th$
149\end_inset
150
151 is electrical rotor position.
152 
153\begin_inset Formula $R_{s}$
154\end_inset
155
156 and
157\begin_inset Formula $L_{s}$
158\end_inset
159
160 is stator resistance and inductance respectively,
161\begin_inset Formula $\Psi_{pm}$
162\end_inset
163
164 is the flux of permanent magnets on the rotor,
165\begin_inset Formula $B$
166\end_inset
167
168 is friction and
169\begin_inset Formula $T_{L}$
170\end_inset
171
172 is load torque,
173\begin_inset Formula $J$
174\end_inset
175
176 is moment of inertia,
177\begin_inset Formula $p_{p}$
178\end_inset
179
180 is the number of pole pairs,
181\begin_inset Formula $k_{p}$
182\end_inset
183
184 is the Park constant.
185\end_layout
186
187\begin_layout Standard
188The sensor-less control scenario arise when sensors of the speed and position
189 (
190\begin_inset Formula $\om$
191\end_inset
192
193 and
194\begin_inset Formula $\th$
195\end_inset
196
197) are missing (from various reasons).
198 Then, the only observed variables are:
199\begin_inset Formula \begin{equation}
200y_{t}=\left[\begin{array}{c}
201\isa{}(t),\isb{}(t),\usa{}(t),\usb{}(t)\end{array}\right].\label{eq:obs}\end{equation}
202
203\end_inset
204
205Which are, however, observed only up to some precision.
206\end_layout
207
208\begin_layout Standard
209Discretization of the model (
210\begin_inset CommandInset ref
211LatexCommand ref
212reference "eq:simulator"
213
214\end_inset
215
216) was performed using Euler method with the following result:
217\begin_inset Formula \begin{align*}
218\isa{,t+1} & =(1-\frac{R_{s}}{L_{s}}\Dt)\isa{,t}+\frac{\Psi_{pm}}{L_{s}}\Dt\omega_{t}\sin\vartheta_{e,t}+\usa{,t}\frac{\Dt}{L_{s}},\\
219\isb{,t+1} & =(1-\frac{R_{s}}{L_{s}}\Dt)\isb{,t}-\frac{\Psi_{pm}}{L_{s}}\Dt\omega_{t}\cos\vartheta_{t}+\usb{,t}\frac{\Dt}{L_{s}},\\
220\om_{t+1} & =(1--\frac{B}{J}\Dt)\om_{t}+\Dt\frac{k_{p}p_{p}^{2}\Psi_{pm}}{J}\left(\isb{,t}\cos(\th_{t})-\isa{,t}\sin(\th_{t})\right)-\frac{p_{p}}{J}T_{L}\Dt,\\
221\vartheta_{t+1} & =\vartheta_{t}+\omega_{t}\Dt.\end{align*}
222
223\end_inset
224
225In this work, we consider parameters of the model known, we can make the
226 following substitutions to simplify notation,
227\begin_inset Formula $a=1-\frac{R_{s}}{L_{s}}\Dt$
228\end_inset
229
230,
231\begin_inset Formula $b=\frac{\Psi_{pm}}{L_{s}}\Dt$
232\end_inset
233
234,
235\begin_inset Formula $c=\frac{\Dt}{L_{s}}$
236\end_inset
237
238,
239\begin_inset Formula $d=1-\frac{B}{J}\Dt$
240\end_inset
241
242,
243\family roman
244\series medium
245\shape up
246\size normal
247\emph off
248\bar no
249\noun off
250\color none
251
252\begin_inset Formula $e=\Dt\frac{k_{p}p_{p}^{2}\Psi_{pm}}{J}$
253\end_inset
254
255, which results in a simplified model:
256\family default
257\series default
258\shape default
259\size default
260\emph default
261\bar default
262\noun default
263\color inherit
264 
265\begin_inset Formula \begin{align}
266\isa{,t+1} & =a\,\isa{,t}+b\omega_{t}\sin\vartheta_{t}+c\usa{,t},\nonumber \\
267\isb{,t+1} & =a\,\isb{,t}-b\omega_{t}\cos\vartheta_{t}+c\usb{,t},\label{eq:model-simple}\\
268\om_{t+1} & =d\om_{t}+e\left(\isb{,t}\cos(\th_{t})-\isa{,t}\sin(\th_{t})\right),\nonumber \\
269\vartheta_{t+1} & =\vartheta_{t}+\omega_{t}\Dt.\nonumber \end{align}
270
271\end_inset
272
273
274\end_layout
275
276\begin_layout Standard
277The above equations can be aggregated into state
278\begin_inset Formula $x_{t}=[\isa{,t},\isb{,t},\om_{t},\th_{t}]$
279\end_inset
280
281 will be denoted as
282\begin_inset Formula $x_{t+1}=g(x_{t},u_{t})$
283\end_inset
284
285.
286\end_layout
287
288\begin_layout Subsection
289Gaussian model of disturbances
290\end_layout
291
292\begin_layout Standard
293This model is motivated by the well known Kalman filter, which is optimal
294 for linear system with Gaussian noise.
295 Hence, we model all disturbances to have covariance matrices
296\begin_inset Formula $Q_{t}$
297\end_inset
298
299 and
300\begin_inset Formula $R_{t}$
301\end_inset
302
303 for the state
304\begin_inset Formula $x_{t}$
305\end_inset
306
307 and observations
308\begin_inset Formula $y_{t}$
309\end_inset
310
311 respectively.
312\begin_inset Formula \begin{align*}
313x_{t+1} & \sim\mathcal{N}(g(x_{t}),Q_{t})\\
314y_{t} & \sim\mathcal{N}([\isa{,t},\isb{,t}]',R_{t})\end{align*}
315
316\end_inset
317
318
319\end_layout
320
321\begin_layout Standard
322Under this assumptions, Bayesian estimation of the state,
323\begin_inset Formula $x_{t}$
324\end_inset
325
326, can be approximated by so called Extended Kalman filter which approximates
327 posterior density of the state by a Gaussian
328\begin_inset Formula \[
329f(x_{t}|y_{1}\ldots y_{t})=\mathcal{N}(\hat{x}_{t},P_{t}).\]
330
331\end_inset
332
333Its sufficient statistics
334\begin_inset Formula $S_{t}=\left[\hat{x}_{t},P_{t}\right]$
335\end_inset
336
337 is evaluated recursively as follows:
338\begin_inset Formula \begin{eqnarray}
339\hat{x}_{t} & = & g(\hat{x}_{t-1})-K\left(y_{t}-h(\hat{x}_{t-1})\right).\label{eq:ekf_mean}\\
340R_{y} & = & C'P_{t-1}C+R_{t},\nonumber \\
341K & = & P_{t-1}CR_{y}^{-1}(y_{t}-h(\hat{x}_{t-1})),\nonumber \\
342P_{t} & = & A\left(P_{t-1}-P_{t-1}C'R_{y}^{-1}CP_{t-1}\right)A+Q_{t}.\label{eq:ekf_cov}\end{eqnarray}
343
344\end_inset
345
346where
347\begin_inset Formula $A=\frac{d}{dx_{t}}g(x_{t})$
348\end_inset
349
350,
351\begin_inset Formula $C=\frac{d}{dx_{t}}h(x_{t})$
352\end_inset
353
354,
355\begin_inset Formula $g(x_{t})$
356\end_inset
357
358 is model (
359\begin_inset CommandInset ref
360LatexCommand ref
361reference "eq:model-simple"
362
363\end_inset
364
365) and
366\begin_inset Formula $h(x_{t})$
367\end_inset
368
369 direct observation of
370\begin_inset Formula $y_{t}=[\isa{,t},\isb{,t}]$
371\end_inset
372
373, i.e.
374\begin_inset Formula \[
375A=\left[\begin{array}{cccc}
376a & 0 & b\sin\th & b\om\cos\th\\
3770 & a & -b\cos\th & b\om\sin\th\\
378-e\sin\th & e\cos\th & d & -e(\isb{}\sin\th+\isa{}\cos\th)\\
3790 & 0 & \Dt & 1\end{array}\right],\quad C=\left[\begin{array}{cccc}
3801\\
381 & 1\\
382 &  & 0\\
383 &  &  & 0\end{array}\right]\]
384
385\end_inset
386
387
388\end_layout
389
390\begin_layout Standard
391Covariance matrices of the system
392\begin_inset Formula $Q$
393\end_inset
394
395 and
396\begin_inset Formula $R$
397\end_inset
398
399 are supposed to be known.
400\end_layout
401
402\begin_layout Subsection
403Test system
404\end_layout
405
406\begin_layout Standard
407A real PMSM system on which the algorithms will be tested has parameters:
408\end_layout
409
410\begin_layout Standard
411\begin_inset Formula \begin{eqnarray*}
412R_{s} & = & 0.28;\\
413L_{s} & = & 0.003465;\\
414\Psi_{pm} & = & 0.1989;\\
415k_{p} & = & 1.5\\
416p & = & 4.0;\\
417J & = & 0.04;\\
418\Delta t & = & 0.000125\end{eqnarray*}
419
420\end_inset
421
422which yields
423\begin_inset Formula \begin{eqnarray*}
424a & = & 0.9898\\
425b & = & 0.0072\\
426c & = & 0.0361\\
427d & = & 1\\
428e & = & 0.0149\end{eqnarray*}
429
430\end_inset
431
432The covaraince matrices
433\begin_inset Formula $Q$
434\end_inset
435
436 and
437\begin_inset Formula $R$
438\end_inset
439
440 are assumed to be known.
441 For the initial tests, we can use the following values:
442\end_layout
443
444\begin_layout Standard
445\begin_inset Formula \begin{eqnarray*}
446Q & = & \mathrm{diag}(0.0013,0.0013,5e-6,1e-10),\\
447R & = & \mathrm{diag}(0.0006,0.0006).\end{eqnarray*}
448
449\end_inset
450
451
452\end_layout
453
454\begin_layout Section
455Control
456\end_layout
457
458\begin_layout Standard
459The task is to reach predefined speed
460\begin_inset Formula $\overline{\omega}_{t}$
461\end_inset
462
463.
464\end_layout
465
466\begin_layout Standard
467For simplicity, we will assume additive loss function:
468\begin_inset Formula \[
469l(x_{t},u_{t})=(\omega_{t}-\overline{\omega}_{t})^{2}+\psi(\usa{,t}^{2}+\usb{,t}^{2}).\]
470
471\end_inset
472
473Here,
474\begin_inset Formula $\psi$
475\end_inset
476
477 is the chosen penalization of the inputs.
478 
479\end_layout
480
481\begin_layout Standard
482Following the standard dynamic programming approach, optimization of the
483 loss function can be done recursively, as follows:
484\begin_inset Formula \[
485V(x_{t-1},u_{t-1})=\arg\min_{u_{t}}\mathsf{E}_{f(x_{t},y_{t}|x_{t-1})}\left\{ l(x_{t},u_{t})+V(x_{t},u_{t})\right\} ,\]
486
487\end_inset
488
489where
490\begin_inset Formula $V(x_{t},u_{t})$
491\end_inset
492
493 is the Bellman function.
494 Since the model evolution is stochastic, we can reformulate it in terms
495 of sufficient statistics,
496\begin_inset Formula $S$
497\end_inset
498
499 as follows:
500\begin_inset Formula \[
501V(S_{t-1})=\min_{u_{t}}\mathsf{E}_{f(x_{t},y_{t}|x_{t-1})}\left\{ l(x_{t},u_{t})+V(S_{t})\right\} .\]
502
503\end_inset
504
505
506\end_layout
507
508\begin_layout Standard
509Representation of the Bellman function depends on chosen approximation.
510\end_layout
511
512\begin_layout Subsection
513Test Scenarios
514\end_layout
515
516\begin_layout Standard
517With almost full information, design of the control strategy should be almost
518 trivial:
519\begin_inset Formula \begin{eqnarray*}
520\hat{\isa{}} & = & 0,\,\hat{\isb{}}=0,\hat{\omega}=1,\th=\frac{\pi}{2},\\
521P_{t} & = & \mathrm{diag}([0.01,0.01,0.01,0.01]).\end{eqnarray*}
522
523\end_inset
524
525
526\end_layout
527
528\begin_layout Standard
529The difficulty arise with growing initial covariance matrix:
530\begin_inset Formula \begin{eqnarray*}
531\hat{\isa{}} & = & 0,\,\hat{\isb{}}=0,\hat{\omega}=1,\th=\frac{\pi}{2},\\
532P_{t} & = & \mathrm{diag}([0.01,0.01,1,1]).\end{eqnarray*}
533
534\end_inset
535
536
537\end_layout
538
539\begin_layout Standard
540Or even worse:
541\begin_inset Formula \begin{eqnarray*}
542\hat{\isa{}} & = & 0,\,\hat{\isb{}}=0,\hat{\omega}=1,\th=\frac{\pi}{2},\\
543P_{t} & = & \mathrm{diag}([0.01,0.01,1,10]).\end{eqnarray*}
544
545\end_inset
546
547
548\end_layout
549
550\begin_layout Standard
551The requested value
552\begin_inset Formula $\overline{\omega}_{t}=3.$
553\end_inset
554
555
556\begin_inset CommandInset bibtex
557LatexCommand bibtex
558bibfiles "bibtex/vs,bibtex/vs-world,bibtex/world_classics,bibtex/world,new_bib_PS"
559options "plain"
560
561\end_inset
562
563
564\end_layout
565
566\end_body
567\end_document
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