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Comment rendre prédictifs des modèles phénoménologiques ? Yvon Maday, Laboratoire Jacques-Louis Lions Sorbonne Université, Paris, Roscoff, France, Institut Universitaire de France Paris — November 9 2021 Année de la mécanique La mécanique à l’interface des autres disciplines Paris

Comment rendre prédictifs des modèles phénoménologiques

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Page 1: Comment rendre prédictifs des modèles phénoménologiques

Comment rendre prédictifs des modèles phénoménologiques ?

Yvon Maday,

Laboratoire Jacques-Louis LionsSorbonne Université, Paris, Roscoff, France,

Institut Universitaire de France

Paris — November 9 2021

Année de la mécanique La mécanique à l’interface des autres disciplines

Paris

Page 2: Comment rendre prédictifs des modèles phénoménologiques

…….. à l’interface des autres disciplines

Page 3: Comment rendre prédictifs des modèles phénoménologiques

…….. à l’interface des autres disciplines

….. où l’on peut rencontrer pas mal de modèles mathématiques sur lesquels des incertitudes existent

Page 4: Comment rendre prédictifs des modèles phénoménologiques

…….. à l’interface des autres disciplines

….. où l’on peut rencontrer pas mal de modèles mathématiques sur lesquels des incertitudes existent

soit sur les mécanismes de réaction

Page 5: Comment rendre prédictifs des modèles phénoménologiques

…….. à l’interface des autres disciplines

….. où l’on peut rencontrer pas mal de modèles mathématiques sur lesquels des incertitudes existent

soit sur les mécanismes de réaction

soit sur les valeurs de constantes

Page 6: Comment rendre prédictifs des modèles phénoménologiques

…….. à l’interface des autres disciplines

….. où l’on peut rencontrer pas mal de modèles mathématiques sur lesquels des incertitudes existent

soit sur les mécanismes de réaction

soit sur les valeurs de constantes

qui d’ailleurs peuvent ne pas être aussi constantes que celà

Page 7: Comment rendre prédictifs des modèles phénoménologiques

modèle de Verhulst:

:

Dynamique de population

et son équivalent discret en temps

…. mais il y a aussi le modèle de Ricker

Page 8: Comment rendre prédictifs des modèles phénoménologiques

modèle de Verhulst:

:

Dynamique de population

et son équivalent discret en temps

…. mais il y a aussi le modèle de Ricker

sans parler des interactions entre espèces

Page 9: Comment rendre prédictifs des modèles phénoménologiques

On a aussi des systèmes spatio-temporels comme….

emprunté dans un exposé de B. Perthame

Page 10: Comment rendre prédictifs des modèles phénoménologiques

peut on les transformer en modèles quantitatifs ?

(avec Edmond CHEN Gong)

ce sont des modèles phénoménologiques .. qualitatifs

Page 11: Comment rendre prédictifs des modèles phénoménologiques

Lets us assume that we have two population of bacterias

that interact in a mutualistic way as follows

Page 12: Comment rendre prédictifs des modèles phénoménologiques

Lets us assume that we have two population of bacterias

that interact in a mutualistic way as follows

actually we do not know that law

the only thing that we know is that n alone behaves like

dn

dt=

n(n� 1)

4<latexit sha1_base64="UOKWMuU8nWwWOSRx8j+z7WHEw6E=">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</latexit><latexit sha1_base64="UOKWMuU8nWwWOSRx8j+z7WHEw6E=">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</latexit><latexit sha1_base64="UOKWMuU8nWwWOSRx8j+z7WHEw6E=">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</latexit><latexit sha1_base64="UOKWMuU8nWwWOSRx8j+z7WHEw6E=">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</latexit>

Page 13: Comment rendre prédictifs des modèles phénoménologiques

Lets us assume that we have two population of bacterias

that interact in a mutualistic way as follows

actually we do not know that law

the only thing that we know is that n alone behaves like

dn

dt=

n(n� 1)

4<latexit sha1_base64="UOKWMuU8nWwWOSRx8j+z7WHEw6E=">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</latexit><latexit sha1_base64="UOKWMuU8nWwWOSRx8j+z7WHEw6E=">AAAC6XicjVHLSsNAFD3GV62vqks3wUbQhZIUQTdC0Y3LCrYKKpJMpxqaJmEyEUrID7hzJ279Abf6I+If6F94Z5qCD0QnJDn33HvOzJ3rxYGfSNt+HTFGx8YnJktT5emZ2bn5ysJiK4lSwXiTRUEkTjw34YEf8qb0ZcBPYsHdnhfwY6+7r/LH11wkfhQeyX7Mz3vuZeh3fOZKoi4qlmWddYTLsnaYZ22Zm7vmIA7Xwg1nPc+2csu6qFTtTVsv8ydwClBFsRpR5QVnaCMCQ4oeOEJIwgFcJPScwoGNmLhzZMQJQr7Oc+QokzalKk4VLrFd+l5SdFqwIcXKM9FqRrsE9ApSmlglTUR1grDazdT5VDsr9jfvTHuqs/Xp7xVePWIlroj9Szes/K9O9SLRwY7uwaeeYs2o7ljhkupbUSc3P3UlySEmTuE25QVhppXDeza1JtG9q7t1df5NVypWxayoTfGuTkkDdr6P8ydo1TYdwoe1an2vGHUJy1jBGs1zG3UcoIEmed/gEU94NrrGrXFn3A9KjZFCs4Qvy3j4ABfknNg=</latexit><latexit sha1_base64="UOKWMuU8nWwWOSRx8j+z7WHEw6E=">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</latexit><latexit sha1_base64="UOKWMuU8nWwWOSRx8j+z7WHEw6E=">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</latexit>

and that, in a natural environment, n behaves better

Page 14: Comment rendre prédictifs des modèles phénoménologiques

the only thing that we know is that n alone behaves like

dn

dt=

n(n� 1)

4<latexit sha1_base64="UOKWMuU8nWwWOSRx8j+z7WHEw6E=">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</latexit><latexit sha1_base64="UOKWMuU8nWwWOSRx8j+z7WHEw6E=">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</latexit><latexit sha1_base64="UOKWMuU8nWwWOSRx8j+z7WHEw6E=">AAAC6XicjVHLSsNAFD3GV62vqks3wUbQhZIUQTdC0Y3LCrYKKpJMpxqaJmEyEUrID7hzJ279Abf6I+If6F94Z5qCD0QnJDn33HvOzJ3rxYGfSNt+HTFGx8YnJktT5emZ2bn5ysJiK4lSwXiTRUEkTjw34YEf8qb0ZcBPYsHdnhfwY6+7r/LH11wkfhQeyX7Mz3vuZeh3fOZKoi4qlmWddYTLsnaYZ22Zm7vmIA7Xwg1nPc+2csu6qFTtTVsv8ydwClBFsRpR5QVnaCMCQ4oeOEJIwgFcJPScwoGNmLhzZMQJQr7Oc+QokzalKk4VLrFd+l5SdFqwIcXKM9FqRrsE9ApSmlglTUR1grDazdT5VDsr9jfvTHuqs/Xp7xVePWIlroj9Szes/K9O9SLRwY7uwaeeYs2o7ljhkupbUSc3P3UlySEmTuE25QVhppXDeza1JtG9q7t1df5NVypWxayoTfGuTkkDdr6P8ydo1TYdwoe1an2vGHUJy1jBGs1zG3UcoIEmed/gEU94NrrGrXFn3A9KjZFCs4Qvy3j4ABfknNg=</latexit><latexit sha1_base64="UOKWMuU8nWwWOSRx8j+z7WHEw6E=">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</latexit>

and that, in a natural environment, n behaves better

so we propose a model for this interaction

and we propose to fit C and K so that it matches with the data on n

actually we do not know m we only guess that there is a mso we also fit m

on known values of nand we use this to extrapolate n

Page 15: Comment rendre prédictifs des modèles phénoménologiques

An example of results : extrapolation from [0, 2] —> [2, 10]With prediction : extrapolation from [0, 2] —> [2, 3] —> [3, 10]

Page 16: Comment rendre prédictifs des modèles phénoménologiques

Different models

propagation of epidemics

Page 17: Comment rendre prédictifs des modèles phénoménologiques

When exposed to an infectious agent, the population is differentiated into several subsets (or compartments), all of which are exclusive to each other:

For example, the entire population can be broken down as follows

- Uninfected people, called susceptible (S), - Infected and contagious people (I), with more or less marked symptoms, - And people removed (R) from the infectious process, either because they are cured or unfortunately died after being infected.

The resulting three-compartment "SIR" model is the simplest of the models described, but it can be detailed by imagining several dozen compartments taking into account, for example, age, sex, professional activity, or even other characteristics of the disease such as

- Non-contagious infected persons without symptoms (E1), - Infected and contagious persons who do not show symptoms (E2), - Infected and contagious but asymptomatic persons (A) …

Compartmental models of epidemics

Page 18: Comment rendre prédictifs des modèles phénoménologiques

During a given period of time (day, week, month), these compartmental models simulate, using differential equations, the average number of people moving from one compartment to another.

For example for the SIR model: S —> I and I —> R.

At the end of each period, the number of individual in each compartment at the beginning of the period is increased by the number of individual entering and decreased by the number of individual leaving.

It is possible to create a local compartmental model at the scale of a city, a region, a country, and to make these models interact through connections that makes it possible to account for exchanges between different areas.

Compartmental models of epidemics

Page 19: Comment rendre prédictifs des modèles phénoménologiques

Example of the SIR model: This is the model proposed by Kermack and McKendrick in 1927.

S RI

How does a healthy individual contract the disease?

by being in contact with a contagious infected people

this contact is proportional to the number of healthy individuals and the number of contagious individuals

dSdt = � �

N SI<latexit sha1_base64="A0eA7hfvs9tdFF/HIus4ybLIGNM=">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</latexit>

where N represents the total number of individuals : N= S+I+Rand we neglect here the new born and « standard » death

Compartmental models of epidemics

Page 20: Comment rendre prédictifs des modèles phénoménologiques

S RI

dSdt = � �

N SI<latexit sha1_base64="A0eA7hfvs9tdFF/HIus4ybLIGNM=">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</latexit>

dIdt = �

N SI � �I<latexit sha1_base64="Vx9no8h6oIEsd7UZ+VsogNKbZfs=">AAAC/3icjVHLTttAFD0Y2gJ9pbBkMyKp1E0jJ12AKiFFsIFNRQV5SEkUjSeT1MIvjcdIkeVF/4Qdu6rb/kC3dFf1D+AvemfiSNCoaseyfebcc87MnfGSwE+16/5acVbXHj1+sr6x+fTZ8xcvK6+2OmmcKSHbIg5i1fN4KgM/km3t60D2EiV56AWy610cmXr3UqrUj6NzPUvkMOTTyJ/4gmuiRpX3tcFEcZGPGWMnRT7WBTtgc4qxgSc1L/IPBRXPjIC9ZYMpD0NOsDaqVN26awdbBo0SVFGO07jyEwOMEUMgQwiJCJpwAI6Unj4acJEQN0ROnCLk27pEgU3yZqSSpODEXtB3SrN+yUY0N5mpdQtaJaBXkZPhNXli0inCZjVm65lNNuzfsnObafY2o79XZoXEanwi9l++hfJ/faYXjQn2bQ8+9ZRYxnQnypTMnorZObvXlaaEhDiDx1RXhIV1Ls6ZWU9qezdny2391ioNa+ai1Ga4M7ukC278eZ3LoNOsN97Vmx+b1dZhedXr2MEu3tB97qGFY5yiTdlX+I4b/HA+O9fOF+frXOqslJ5tPBjOt995G6Mj</latexit>

dRdt = �I

<latexit sha1_base64="OOP5+8RZXM+6w57UALDi9dfPJuM=">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</latexit>

Compartmental models of epidemics

Example of the SIR model: This is the model proposed by Kermack and McKendrick in 1927.

Page 21: Comment rendre prédictifs des modèles phénoménologiques

Here is what can be obtained, day after day, in France by the numerical resolution of such a model with a transmission rate = 0.45 and a cure rate =1/15 :

Popu

latio

nen

diz

aine

de

mill

ions

d’h

abita

nts

Compartmental models of epidemics

Example of the SIR model: This is the model proposed by Kermack and McKendrick in 1927.

Page 22: Comment rendre prédictifs des modèles phénoménologiques

Such a model can also simulate the effect of a confinement by modifying (decreasing) the value of the transmission rate , for example by increasing it from 0.45 to 0.15 after 7 days.

Popu

latio

nen

diz

aine

de

mill

ions

d’h

abita

nts

Compartmental models of epidemics

Example of the SIR model: This is the model proposed by Kermack and McKendrick in 1927.

Page 23: Comment rendre prédictifs des modèles phénoménologiques

We can, as we said before, increase the number of compartments

an important effect that a SIR model does not see is the pre-infectious period, and the fact that many patients can go unnoticed (Asymptomatic and Unnoticed): « Magal & Webb» model

P. Magal and G. Webb, The parameter identification problem for SIR epidemic models: Identifying Unreported Cases, J. Math. Biol. (2018).A. Ducrot, P. Magal, T. Nguyen, G. Webb, Identifying the Number of Unreported Cases in SIR Epidemic Models. Mathematical Medicine and Biology, (2019)

Compartmental models of epidemics

Page 24: Comment rendre prédictifs des modèles phénoménologiques

P. Magal and G. Webb, The parameter identification problem for SIR epidemic models: Identifying Unreported Cases, J. Math. Biol. (2018).A. Ducrot, P. Magal, T. Nguyen, G. Webb, Identifying the Number of Unreported Cases in SIR Epidemic Models. Mathematical Medicine and Biology, (2019)

Compartmental models of epidemics

We can, as we said before, increase the number of compartments

an important effect that a SIR model does not see is the pre-infectious period, and the fact that many patients can go unnoticed (Asymptomatic and Unnoticed): « Magal & Webb» model

Page 25: Comment rendre prédictifs des modèles phénoménologiques

Expected impact of reopening schools after lockdown on COVID-19 epidemic in Île-de-France, Laura Di Domenico , Giulia Pullano , Chiara E. Sabbatini , Pierre-Yves Boëlle , Vittoria Colizza

But it is also possible to increase the number of compartments in a more substantial way : S=Susceptible, E=Exposed, Ip= Infectious in the prodromic phase (the length of time including E and Ip stages is the incubation period), Ia=Asymptomatic Infectious, Ips=Paucysymptomatic Infectious, Ims=Symptomatic Infectious with mild symptoms, Iss=Symptomatic Infectious with severe symptoms, HICU= severe case who will enter in ICU, ICU=severe case admitted to ICU, H=severe case admitted to the hospital but not in intensive care, R=Recovered, D=Deceased

Compartmental models of epidemics

We can, as we said before, increase the number of compartments

Page 26: Comment rendre prédictifs des modèles phénoménologiques

Expected impact of reopening schools after lockdown on COVID-19 epidemic in Île-de-France, Laura Di Domenico , Giulia Pullano , Chiara E. Sabbatini , Pierre-Yves Boëlle , Vittoria Colizza

It is easy to understand that the number of parameters to be set is very large here and this becomes a problem.

and this requires access to data

Compartmental models of epidemics

But it is also possible to increase the number of compartments in a more substantial way : S=Susceptible, E=Exposed, Ip= Infectious in the prodromic phase (the length of time including E and Ip stages is the incubation period), Ia=Asymptomatic Infectious, Ips=Paucysymptomatic Infectious, Ims=Symptomatic Infectious with mild symptoms, Iss=Symptomatic Infectious with severe symptoms, HICU= severe case who will enter in ICU, ICU=severe case admitted to ICU, H=severe case admitted to the hospital but not in intensive care, R=Recovered, D=Deceased

We can, as we said before, increase the number of compartments

Page 27: Comment rendre prédictifs des modèles phénoménologiques

Let us come back to the Magal & Webb model

there is a bifurcation between « R » and « U »

another way of asking the question: what is the proportion of cases not carried over?

Compartmental models of epidemics

Page 28: Comment rendre prédictifs des modèles phénoménologiques

Alternative proposal that we started to study with Olga Mula, Thomas Boiveau, Athmane Bakhta

A SIR model with 2 coefficients and that depend on time

dS

dt(t) = ��(t)I(t)S(t)

N

dI

dt(t) =

�(t)I(t)S(t)

N� �(t)I(t)

dR

dt(t) = �(t)I(t)

<latexit sha1_base64="lZaD0Y17etM8weXuJHA/8Xjq8RQ=">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</latexit>

min�,�

{kIdata � I�,�k+ kRdata �R�,�k}<latexit sha1_base64="fGHqSOAMPu4VCF7oV8OL1iMKu/I=">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</latexit>

We then have 2 coefficients to calibrate according to the data, by solving a minimization problem

Compartmental models of epidemics

Bakhta, A., Boiveau, T., Maday, Y., & Mula, O. (2021). Epidemiological Forecasting with Model Reduction of Compartmental Models. Application to the COVID-19 Pandemic. Biology, 10(1), 22.

Page 29: Comment rendre prédictifs des modèles phénoménologiques

Compartmental models of epidemics

Alternative proposal that we started to study with Olga Mula, Thomas Boiveau, Athmane Bakhta

Bakhta, A., Boiveau, T., Maday, Y., & Mula, O. (2021). Epidemiological Forecasting with Model Reduction of Compartmental Models. Application to the COVID-19 Pandemic. Biology, 10(1), 22.

Page 30: Comment rendre prédictifs des modèles phénoménologiques

Compartmental models of epidemics

Alternative proposal that we started to study with Olga Mula, Thomas Boiveau, Athmane Bakhta

�(t) = � N

I(t)S(t)

dS(t)

dt

�(t) =1

I(t)

dI

dt(t)� �(t)I(t)S(t)

N

<latexit sha1_base64="A/Hw4iyIiuycWAllMGJdeUf6B7s=">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</latexit>

Bakhta, A., Boiveau, T., Maday, Y., & Mula, O. (2021). Epidemiological Forecasting with Model Reduction of Compartmental Models. Application to the COVID-19 Pandemic. Biology, 10(1), 22.

Page 31: Comment rendre prédictifs des modèles phénoménologiques

And then!

�(t) = � N

I(t)S(t)

dS(t)

dt

�(t) =1

I(t)

dI

dt(t)� �(t)I(t)S(t)

N

<latexit sha1_base64="A/Hw4iyIiuycWAllMGJdeUf6B7s=">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</latexit>

we can learn from different models (Magal, Colizza, … each one indexed by a generic ) the behaviour of the coefficients

S = {�(t;µ), �(t;µ)}<latexit sha1_base64="wbbxkOHiLuN5+QP7J4aXtK/BaE4=">AAAC93icjVHLSsNAFD3G97vq0s1gK1SQktaFggiiG5eKVgVTymQcazAvkolQSv/DnTtx6w+41T8Q/0D/wjtjCmoRnZDk3HPvOTN3rhv7Xqps+3XAGhwaHhkdG5+YnJqemS3MzR+nUZYIWReRHyWnLk+l74Wyrjzly9M4kTxwfXniXu3q/Mm1TFIvCo9UO5aNgLdC78ITXBHVLNRKpY4TcHUpuM8Ou2yLOR3HlYqX1aYTZCurzGnxIOiFTrdUahaKdsU2i/WDag6KyNd+VHiBg3NEEMgQQCKEIuyDI6XnDFXYiIlroENcQsgzeYkuJkibUZWkCk7sFX1bFJ3lbEix9kyNWtAuPr0JKRmWSRNRXUJY78ZMPjPOmv3Nu2M89dna9Hdzr4BYhUti/9L1Kv+r070oXGDD9OBRT7FhdHcid8nMreiTsy9dKXKIidP4nPIJYWGUvXtmRpOa3vXdcpN/M5Wa1bHIazO861PSgKs/x9kPjmuV6lqldlArbu/kox7DIpZQpnmuYxt72EedvG/wiCc8W23r1rqz7j9LrYFcs4Bvy3r4AOzJoZ8=</latexit>

Alternative proposal that we started to study with Olga Mula, Thomas Boiveau, Athmane Bakhta

Bakhta, A., Boiveau, T., Maday, Y., & Mula, O. (2021). Epidemiological Forecasting with Model Reduction of Compartmental Models. Application to the COVID-19 Pandemic. Biology, 10(1), 22.

Page 32: Comment rendre prédictifs des modèles phénoménologiques

And then!

�(t) = � N

I(t)S(t)

dS(t)

dt

�(t) =1

I(t)

dI

dt(t)� �(t)I(t)S(t)

N

<latexit sha1_base64="A/Hw4iyIiuycWAllMGJdeUf6B7s=">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</latexit>

we can learn from different models (Magal, Colizza, … each one indexed by a generic ) the behaviour of the coefficients

S = {�(t;µ), �(t;µ)}<latexit sha1_base64="wbbxkOHiLuN5+QP7J4aXtK/BaE4=">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</latexit>

Alternative proposal that we started to study with Olga Mula, Thomas Boiveau, Athmane Bakhta

Bakhta, A., Boiveau, T., Maday, Y., & Mula, O. (2021). Epidemiological Forecasting with Model Reduction of Compartmental Models. Application to the COVID-19 Pandemic. Biology, 10(1), 22.

Page 33: Comment rendre prédictifs des modèles phénoménologiques

And then!

�(t) = � N

I(t)S(t)

dS(t)

dt

�(t) =1

I(t)

dI

dt(t)� �(t)I(t)S(t)

N

<latexit sha1_base64="A/Hw4iyIiuycWAllMGJdeUf6B7s=">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</latexit>

we can learn from different models (Magal, Colizza, … each one indexed by a generic ) the behaviour of the coefficients

S = {�(t;µ), �(t;µ)}<latexit sha1_base64="wbbxkOHiLuN5+QP7J4aXtK/BaE4=">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</latexit>

Alternative proposal that we started to study with Olga Mula, Thomas Boiveau, Athmane Bakhta

Bakhta, A., Boiveau, T., Maday, Y., & Mula, O. (2021). Epidemiological Forecasting with Model Reduction of Compartmental Models. Application to the COVID-19 Pandemic. Biology, 10(1), 22.

Page 34: Comment rendre prédictifs des modèles phénoménologiques

And then!

�(t) = � N

I(t)S(t)

dS(t)

dt

�(t) =1

I(t)

dI

dt(t)� �(t)I(t)S(t)

N

<latexit sha1_base64="A/Hw4iyIiuycWAllMGJdeUf6B7s=">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</latexit>

we can learn from different models (Magal, Colizza, … each one indexed by a generic ) the behaviour of the coefficients

over a period of time beyond the current epidemic data window.

S = {�(t;µ), �(t;µ)}<latexit sha1_base64="wbbxkOHiLuN5+QP7J4aXtK/BaE4=">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</latexit>

Alternative proposal that we started to study with Olga Mula, Thomas Boiveau, Athmane Bakhta

Bakhta, A., Boiveau, T., Maday, Y., & Mula, O. (2021). Epidemiological Forecasting with Model Reduction of Compartmental Models. Application to the COVID-19 Pandemic. Biology, 10(1), 22.

Page 35: Comment rendre prédictifs des modèles phénoménologiques

And then!

Model reduction approach

S = {�(t;µ), �(t;µ)} ' Span{�i, �i, i = 1, . . . , N}

<latexit sha1_base64="uaW8GTJeLy03Mf1soE+gstrnLd0=">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</latexit>

if S has a small Kolmogorov n-width

<latexit sha1_base64="CNmL6dTLUVFV5oXv3p+fbAy+o6w=">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</latexit>

Page 36: Comment rendre prédictifs des modèles phénoménologiques

And then!

Model reduction approach

S = {�(t;µ), �(t;µ)} ' Span{�i, �i, i = 1, . . . , N}

<latexit sha1_base64="uaW8GTJeLy03Mf1soE+gstrnLd0=">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</latexit>

if S has a small Kolmogorov n-width

<latexit sha1_base64="CNmL6dTLUVFV5oXv3p+fbAy+o6w=">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</latexit>

meaning that, for a small value of N

8µ, �(.;µ) 'NX

i=1

↵i�i(.)

<latexit sha1_base64="STY40PI3RXkuEdVbBGunI5r1Tu0=">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</latexit>

Page 37: Comment rendre prédictifs des modèles phénoménologiques

And then!

Model reduction approach

S = {�(t;µ), �(t;µ)} ' Span{�i, �i, i = 1, . . . , N}

<latexit sha1_base64="uaW8GTJeLy03Mf1soE+gstrnLd0=">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</latexit>

if S has a small Kolmogorov n-width

<latexit sha1_base64="CNmL6dTLUVFV5oXv3p+fbAy+o6w=">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</latexit>

how do we get the �i and �i ? Through POD/SVD/KL

<latexit sha1_base64="M5c89ywIGqmA1GZzY2+kVlN1bsM=">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</latexit>

Page 38: Comment rendre prédictifs des modèles phénoménologiques

And then!

Model reduction approach

S = {�(t;µ), �(t;µ)} ' Span{�i, �i, i = 1, . . . , N}

<latexit sha1_base64="uaW8GTJeLy03Mf1soE+gstrnLd0=">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</latexit>

if S has a small Kolmogorov n-width

<latexit sha1_base64="CNmL6dTLUVFV5oXv3p+fbAy+o6w=">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</latexit>

how do we get the �i and �i ? Through POD/SVD/KL

<latexit sha1_base64="M5c89ywIGqmA1GZzY2+kVlN1bsM=">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</latexit>

Page 39: Comment rendre prédictifs des modèles phénoménologiques

And then!

Model reduction approach

S = {�(t;µ), �(t;µ)} ' Span{�i, �i, i = 1, . . . , N}

<latexit sha1_base64="uaW8GTJeLy03Mf1soE+gstrnLd0=">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</latexit>

and provide a reduced basis for interpolation… and extrapolation…

Page 40: Comment rendre prédictifs des modèles phénoménologiques

And then!

Model reduction approach

S = {�(t;µ), �(t;µ)} ' Span{�i, �i, i = 1, . . . , N}

<latexit sha1_base64="uaW8GTJeLy03Mf1soE+gstrnLd0=">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</latexit>

and provide a reduced basis for interpolation… and extrapolation…

Page 41: Comment rendre prédictifs des modèles phénoménologiques

And then!

Model reduction approach

S = {�(t;µ), �(t;µ)} ' Span{�i, �i, i = 1, . . . , N}

<latexit sha1_base64="uaW8GTJeLy03Mf1soE+gstrnLd0=">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</latexit>

and provide a reduced basis for interpolation… and extrapolation…

Page 42: Comment rendre prédictifs des modèles phénoménologiques

on n’utilise que ces donnéespour prédire les 14 jours suivants

on n’utilise que ces données

pour prédire les 14 jours suivants

Prévision au 1 Avril sur 14 jours/ comparaison avec les données Santé Publique France

Page 43: Comment rendre prédictifs des modèles phénoménologiques

on n’utilise que ces données

pour prédire les 14 jours suivants

on n’utilise que ces données

pour prédire les 14 jours suivants

Prévision au 7 avril sur 14 jours/ comparaison avec les données Santé Publique France

Page 44: Comment rendre prédictifs des modèles phénoménologiques

on n’utilise que ces données

pour prédire les 14 jours suivants

on n’utilise que ces données

pour prédire les 14 jours suivants

Prévision au 9 avril sur 14 jours/ comparaison avec les données Santé Publique France

Page 45: Comment rendre prédictifs des modèles phénoménologiques

on n’utilise que ces données

pour prédire les 14 jours suivants

on n’utilise que ces données

pour prédire les 14 jours suivants

Prévision au 21 avril sur 14 jours/ comparaison avec les données Santé Publique France

Page 46: Comment rendre prédictifs des modèles phénoménologiques

Seconde vague

on connait la suite mais on ne l’utilise pas

Page 47: Comment rendre prédictifs des modèles phénoménologiques

on n’utilise que ces données

pour prédire les 14 jours suivants

on n’utilise que ces données

pour prédire les 14 jours suivants

Prévision au 28 Octobre sur 14 jours/ comparaison avec les données Santé Publique France

Page 48: Comment rendre prédictifs des modèles phénoménologiques

on n’utilise que ces données

pour prédire les 14 jours suivants

on n’utilise que ces données

pour prédire les 14 jours suivants

Prévision au 3 Novembre sur 14 jours/ comparaison avec les données Santé Publique France

Page 49: Comment rendre prédictifs des modèles phénoménologiques

on n’utilise que ces données

pour prédire les 14 jours suivants

on n’utilise que ces données

pour prédire les 14 jours suivants

Prévision au 9 Novembre sur 14 jours/ comparaison avec les données Santé Publique France

Page 50: Comment rendre prédictifs des modèles phénoménologiques

And then!

and provide a reduced basis for interpolation… and extrapolation…

actually it may not be so good !

Page 51: Comment rendre prédictifs des modèles phénoménologiques

And then!

and provide a reduced basis for interpolation… and extrapolation…

actually it may not be so good !

the reason is that � and � should remain positive !

<latexit sha1_base64="ws4FA0Y23gotKW3lJXpkGzTQdLQ=">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</latexit>

Bakhta, A., Boiveau, T., Maday, Y., & Mula, O. (2021). Epidemiological Forecasting with Model Reduction of Compartmental Models. Application to the COVID-19 Pandemic. Biology, 10(1), 22.

Page 52: Comment rendre prédictifs des modèles phénoménologiques

And then!

and provide a reduced basis for interpolation… and extrapolation…

actually it may not be so good !

the reason is that � and � should remain positive !

<latexit sha1_base64="ws4FA0Y23gotKW3lJXpkGzTQdLQ=">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</latexit>

�(t)= �

N

I(t)S(t)

dS(t)

dt

�(t)=

1

I(t)

dI

dt(t)�

�(t)I(t)S(

t)

N

<latexit sha1_base64="A/Hw4iyIiuycWAllMGJdeUf6B7s=">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</latexit>

Page 53: Comment rendre prédictifs des modèles phénoménologiques

And then!

and provide a reduced basis for interpolation… and extrapolation…

the precision is enough to assure the positivity for INTERPOLATION

but not for FORECASTING = EXTRAPOLATION

<latexit sha1_base64="gm0AOdU8bYz2AUG+JsvYSlsXh5s=">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</latexit>

Page 54: Comment rendre prédictifs des modèles phénoménologiques

And then!

and provide a reduced basis for interpolation… and extrapolation…

the precision is enough to assure the positivity for INTERPOLATION

but not for FORECASTING = EXTRAPOLATION

<latexit sha1_base64="gm0AOdU8bYz2AUG+JsvYSlsXh5s=">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</latexit>

CURE …..

Impose positive coefficients …

Page 55: Comment rendre prédictifs des modèles phénoménologiques

And then!

and provide a reduced basis for interpolation… and extrapolation…

the precision is enough to assure the positivity for INTERPOLATION

but not for FORECASTING = EXTRAPOLATION

<latexit sha1_base64="gm0AOdU8bYz2AUG+JsvYSlsXh5s=">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</latexit>

CURE …..

Impose positive coefficients … not sufficient …

Page 56: Comment rendre prédictifs des modèles phénoménologiques

And then!

and provide a reduced basis for interpolation… and extrapolation…

CURE …..

Impose positive coefficients …

Page 57: Comment rendre prédictifs des modèles phénoménologiques

And then!

and provide a reduced basis for interpolation… and extrapolation…

CURE …..

Impose positive coefficients …

enlarge the cone

Page 58: Comment rendre prédictifs des modèles phénoménologiques

And then!

and provide a reduced basis for interpolation… and extrapolation…

enlarge the cone

Define a new basis set : �̃i

�̃i = �i �X

j 6=i

�ij�j

with positive coe�cients �ij

so as to maintain the positivity of �̃i but minimize its L1 normand then set

8µ;�(.;µ) 'NX

i=1

↵i�̃i(.)

<latexit sha1_base64="gaIkKQo8CCjyFRWhkGUJxwnr9nM=">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</latexit>

Page 59: Comment rendre prédictifs des modèles phénoménologiques

on n’utilise que ces données

pour prédire les 14 jours suivants

Prévision au 2 Mars sur 14 jours/ comparaison avec les données Santé Publique France

2021-0

1-06

2021-0

1-20

2021-0

2-03

2021-0

2-17

2021-0

3-03

2021-0

3-17

2021-0

3-31

1.5e+04

2.0e+04

2.5e+04Iobs

IENG

data limit

Page 60: Comment rendre prédictifs des modèles phénoménologiques

on n’utilise que ces données

pour prédire les 14 jours suivants

Prévision au 10 Mars sur 14 jours/ comparaison avec les données Santé Publique France

2021-0

1-06

2021-0

1-20

2021-0

2-03

2021-0

2-17

2021-0

3-03

2021-0

3-17

2021-0

3-31

1.5e+04

2.0e+04

2.5e+04Iobs

IENG

data limit

2021-0

1-13

2021-0

1-27

2021-0

2-10

2021-0

2-24

2021-0

3-10

2021-0

3-24

2021-0

4-07

1.5e+04

2.0e+04

2.5e+04Iobs

IENG

data limit

Page 61: Comment rendre prédictifs des modèles phénoménologiques

on n’utilise que ces données

pour prédire les 14 jours suivants

Prévision au 12 Mars sur 14 jours/ comparaison avec les données Santé Publique France

2021-0

1-06

2021-0

1-20

2021-0

2-03

2021-0

2-17

2021-0

3-03

2021-0

3-17

2021-0

3-31

1.5e+04

2.0e+04

2.5e+04Iobs

IENG

data limit

2021-0

1-15

2021-0

1-29

2021-0

2-12

2021-0

2-26

2021-0

3-12

2021-0

3-26

2021-0

4-09

1.0e+04

1.5e+04

2.0e+04

2.5e+04

3.0e+04Iobs

IENG

data limit

Page 62: Comment rendre prédictifs des modèles phénoménologiques

on n’utilise que ces données

pour prédire les 14 jours suivants

Prévision au 23 Mars sur 14 jours/ comparaison avec les données Santé Publique France

2021-0

1-06

2021-0

1-20

2021-0

2-03

2021-0

2-17

2021-0

3-03

2021-0

3-17

2021-0

3-31

1.5e+04

2.0e+04

2.5e+04Iobs

IENG

data limit

2021-0

1-26

2021-0

2-09

2021-0

2-23

2021-0

3-09

2021-0

3-23

2021-0

4-06

2021-0

4-20

2.0e+04

4.0e+04

Iobs

IENG

data limit

Page 63: Comment rendre prédictifs des modèles phénoménologiques

on n’utilise que ces données

pour prédire les 14 jours suivants

Prévision au 26 Mars sur 14 jours/ comparaison avec les données Santé Publique France

2021-0

1-06

2021-0

1-20

2021-0

2-03

2021-0

2-17

2021-0

3-03

2021-0

3-17

2021-0

3-31

1.5e+04

2.0e+04

2.5e+04Iobs

IENG

data limit

2021-0

1-29

2021-0

2-12

2021-0

2-26

2021-0

3-12

2021-0

3-26

2021-0

4-09

2021-0

4-23

1.5e+04

2.0e+04

2.5e+04 Iobs

IENG

data limit

Page 64: Comment rendre prédictifs des modèles phénoménologiques

on n’utilise que ces données

pour prédire les 14 jours suivants

Prévision au 27 Mars sur 14 jours/ comparaison avec les données Santé Publique France

2021-0

1-06

2021-0

1-20

2021-0

2-03

2021-0

2-17

2021-0

3-03

2021-0

3-17

2021-0

3-31

1.5e+04

2.0e+04

2.5e+04Iobs

IENG

data limit

2021-0

1-30

2021-0

2-13

2021-0

2-27

2021-0

3-13

2021-0

3-27

2021-0

4-10

2021-0

4-24

1.5e+04

2.0e+04

2.5e+04Iobs

IENG

data limit

Page 65: Comment rendre prédictifs des modèles phénoménologiques
Page 66: Comment rendre prédictifs des modèles phénoménologiques
Page 67: Comment rendre prédictifs des modèles phénoménologiques

La mécanique à l’interface des autres disciplines

en fait, en mécanique, il y a des modèles plus solides

avec des instruments pour mesurer les constantes

Page 68: Comment rendre prédictifs des modèles phénoménologiques

La mécanique à l’interface des autres disciplines

en fait, en mécanique, il y a des modèles plus solides

avec des instruments pour mesurer les constantes

mais il reste pas mal d’incertitudes

ou des approximations à réaliser

Page 69: Comment rendre prédictifs des modèles phénoménologiques

un exemple ou des approximations sont réaliseées

thèse de Elise Grosjean

Page 70: Comment rendre prédictifs des modèles phénoménologiques

un exemple ou des approximations sont réaliseées

thèse de Elise Grosjean

Page 71: Comment rendre prédictifs des modèles phénoménologiques

un exemple ou des approximations sont réaliseées

thèse de Elise Grosjean

NIRB + réduction du domaine

Page 72: Comment rendre prédictifs des modèles phénoménologiques

un exemple ou des approximations sont réaliseées

thèse de Elise Grosjean

NIRB + réduction du domaine

Page 73: Comment rendre prédictifs des modèles phénoménologiques

un exemple ou des approximations sont réaliseées

thèse de Elise Grosjean

NIRB + réduction du domaine

Page 74: Comment rendre prédictifs des modèles phénoménologiques

un exemple ou des approximations sont réaliseées

thèse de Elise Grosjean

NIRB + réduction du domaine

Page 75: Comment rendre prédictifs des modèles phénoménologiques

un exemple ou des approximations sont réaliseées

thèse de Elise Grosjean

NIRB + réduction du domaine

Page 76: Comment rendre prédictifs des modèles phénoménologiques

La mécanique à l’interface des autres disciplines

en fait, en mécanique, il y a des modèles plus solides

avec des instruments pour mesurer les constantes

mais il reste pas mal d’incertitudes

ou des approximations à réaliser

More to come ….