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2022年第十一届认证杯数学中国数学建模国际赛(小美赛)赛题发布

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    发表于 2022-12-2 08:01 |只看该作者 |倒序浏览
    |招呼Ta 关注Ta
    2022小美赛赛题的移动云盘下载地址
    ( e$ H7 q; [. s* Yhttps://caiyun.139.com/m/i?0F5CJAMhGgSJx
    8 ]" p  x3 ]0 c, W# g9 `" T2 M, \- W
    2022
    0 r% n! E' M9 A5 c# b1 `( CCertifificate Authority Cup International Mathematical Contest Modeling
    ) y' f0 y9 z2 K8 q: Rhttp://mcm.tzmcm.cn
    4 U, I# I6 w; H9 _Problem A (MCM)9 a' ~0 J/ d( m4 L: Y8 d# q
    How Pterosaurs Fly/ V8 d: s" i) K8 {. ~+ T
    Pterosaurs is an extinct clade of flflying reptiles in the order, Pterosauria. They/ b* e- O0 `# M, _  k
    existed during most of the Mesozoic: from the Late Triassic to the end of
    + }$ Z! B% d8 D" f( G0 R6 Dthe Cretaceous. Pterosaurs are the earliest vertebrates known to have evolved& P$ N( j% j' n) X8 U, k2 B6 Z& U, w* j
    powered flflight. Their wings were formed by a membrane of skin, muscle, and
    . ~3 G, z. ?3 i* w& Z4 oother tissues stretching from the ankles to a dramatically lengthened fourth# j: U  R0 L3 A5 i- z$ B0 N
    fifinger[1].
    8 y' e5 x+ e! _& a, jThere were two major types of pterosaurs. Basal pterosaurs were smaller
    4 Y: P$ b* W2 i8 D) {; danimals with fully toothed jaws and long tails usually. Their wide wing mem% Z% ^7 T# b& [
    branes probably included and connected the hind legs. On the ground, they2 _$ {2 h1 B6 m  S
    would have had an awkward sprawling posture, but their joint anatomy and
    9 H$ V' k4 Q* O, S  gstrong claws would have made them effffective climbers, and they may have lived% s6 e) I6 i& r: `& [; }! I
    in trees. Basal pterosaurs were insectivores or predators of small vertebrates.
    $ I5 @( M  P8 k% k5 p, L! |6 eLater pterosaurs (pterodactyloids) evolved many sizes, shapes, and lifestyles.
    7 @/ u3 k( i( hPterodactyloids had narrower wings with free hind limbs, highly reduced tails,0 r# ?! C% u8 E9 N) i$ E0 u
    and long necks with large heads. On the ground, pterodactyloids walked well on7 i; ]6 C' f8 C  u( C
    all four limbs with an upright posture, standing plantigrade on the hind feet and
    ' v6 J! J1 J; {4 @0 }6 T% f5 i3 d  bfolding the wing fifinger upward to walk on the three-fifingered “hand”. The fossil
    ' S2 v' _3 G. l$ _3 D- x* }4 C8 Strackways show at least some species were able to run and wade or swim[2].7 f6 Z; V& A% P4 I
    Pterosaurs sported coats of hair-like fifilaments known as pycnofifibers, which& Z, C8 t3 @  ]# @
    covered their bodies and parts of their wings[3]. In life, pterosaurs would have
    - N2 K- y4 n. M/ uhad smooth or flfluffffy coats that did not resemble bird feathers. Earlier sug8 \' S8 [4 S9 [1 K
    gestions were that pterosaurs were largely cold-blooded gliding animals, de
    ' m  L4 U0 C" D( _$ |$ @riving warmth from the environment like modern lizards, rather than burning$ X" x" ?0 A& b6 M
    calories. However, later studies have shown that they may be warm-blooded; _0 x! N7 E- o) a( S5 H1 C
    (endothermic), active animals. The respiratory system had effiffifficient unidirec3 k& I* n- k' M$ o
    tional “flflow-through” breathing using air sacs, which hollowed out their bones" `, C7 o5 S) o( J$ v9 Z8 {
    to an extreme extent. Pterosaurs spanned a wide range of adult sizes, from
    # a% K0 O% r4 V' s  K, fthe very small anurognathids to the largest known flflying creatures, including: F% H" T# y7 x4 R1 T' q: l9 B* ~' c
    Quetzalcoatlus and Hatzegopteryx[4][5], which reached wingspans of at least
    0 i2 x$ ^& q$ S9 B- Fnine metres. The combination of endothermy, a good oxygen supply and strong
    ; D; X8 e, ]: ~$ G4 `9 |( X1muscles made pterosaurs powerful and capable flflyers.: u5 m: u1 l4 i3 w% f4 {2 g
    The mechanics of pterosaur flflight are not completely understood or modeled8 [$ J# _+ U- |6 m1 m4 b+ h8 J; h
    at this time. Katsufumi Sato did calculations using modern birds and concluded5 E) x, N$ D4 u% D
    that it was impossible for a pterosaur to stay aloft[6]. In the book Posture,9 }  M+ \" D0 Q" z% Y: p
    Locomotion, and Paleoecology of Pterosaurs it is theorized that they were able! ~. }" }3 U7 ]/ |3 h
    to flfly due to the oxygen-rich, dense atmosphere of the Late Cretaceous period[7].6 S) {: ?) ?  S3 j  d9 a* D7 ]( [
    However, both Sato and the authors of Posture, Locomotion, and Paleoecology7 b# h' n0 @$ t- Y( N" P6 o
    of Pterosaurs based their research on the now-outdated theories of pterosaurs0 l; x$ t( f) ~' e
    being seabird-like, and the size limit does not apply to terrestrial pterosaurs,
    2 F, S/ U  `4 L4 ysuch as azhdarchids and tapejarids. Furthermore, Darren Naish concluded that6 M) ~& v) n- ]
    atmospheric difffferences between the present and the Mesozoic were not needed
    ! G4 T  o# I& O( D4 H2 k8 Y9 S2 qfor the giant size of pterosaurs[8].0 X6 U; m  @1 I2 ]
    Another issue that has been diffiffifficult to understand is how they took offff.
    * ^5 v. c: }- I* JIf pterosaurs were cold-blooded animals, it was unclear how the larger ones  Z& g  p5 K: L( o3 ~) h
    of enormous size, with an ineffiffifficient cold-blooded metabolism, could manage9 i0 {# Q3 x, ?0 L5 _9 T
    a bird-like takeoffff strategy, using only the hind limbs to generate thrust for0 S6 U7 K( ^, B- c. t/ C: x: L
    getting airborne. Later research shows them instead as being warm-blooded  ^, t  D. {1 r* v; U9 b
    and having powerful flflight muscles, and using the flflight muscles for walking as
      }' L' D& B* I3 c7 v; bquadrupeds[9]. Mark Witton of the University of Portsmouth and Mike Habib of) `3 Z5 Q7 Y3 f8 u4 g( M! P
    Johns Hopkins University suggested that pterosaurs used a vaulting mechanism
    5 b8 K4 x+ ^7 i# `9 p* Dto obtain flflight[10]. The tremendous power of their winged forelimbs would7 v$ |- I4 x. R# S4 N
    enable them to take offff with ease[9]. Once aloft, pterosaurs could reach speeds( E- J/ j4 w" a: a: w* i
    of up to 120 km/h and travel thousands of kilometres[10].
    ; M1 S' N/ X8 g7 _; {Your team are asked to develop a reasonable mathematical model of the
    2 `3 g9 h7 f! i+ w; ]" Wflflight process of at least one large pterosaur based on fossil measurements and3 G2 u. p% K! |2 S' M( A
    to answer the following questions.3 r, G! Q5 R0 W. k- z
    1. For your selected pterosaur species, estimate its average speed during nor
      v. o$ S2 ^3 Y( b# {2 nmal flflight.
    ' A: W/ f/ m& E! A8 t9 u7 ]2. For your selected pterosaur species, estimate its wing-flflap frequency during% o- q2 X" C6 N1 Y
    normal flflight.1 a" ?' }5 |3 w* Y; w
    3. Study how large pterosaurs take offff; is it possible for them to take offff like
    4 h$ d6 T; L$ |( hbirds on flflat ground or on water? Explain the reasons quantitatively.
    1 U; ]5 }3 p/ T: {4 UReferences
    5 ^6 r2 {( b- y: g  f[1] Elgin RA, Hone DW, Frey E (2011). The Extent of the Pterosaur Flight# ]6 w# ?3 }$ T5 v1 o
    Membrane. Acta Palaeontologica Polonica. 56 (1): 99-111.2 t" U" P8 s8 M7 M! M' f+ F
    2[2] Mark Witton. Terrestrial Locomotion.
    8 [1 \1 f. A) v  Yhttps://pterosaur.net/terrestrial locomotion.php5 M' {2 }0 u4 E0 M; H
    [3] Laura Geggel. It’s Offiffifficial: Those Flying Reptiles Called Pterosaurs
    8 |- o3 a$ B" `/ |Were Covered in Fluffffy Feathers. https://www.livescience.com/64324-6 e8 t* c! ?/ v1 l: n) y4 k8 L
    pterosaurs-had-feathers.html
    : B3 j7 N/ e+ y[4] Wang, X.; Kellner, A.W.A.; Zhou, Z.; Campos, D.A. (2008). Discovery of a
    & v" L& C! D; ]1 Z$ Xrare arboreal forest-dwelling flflying reptile (Pterosauria, Pterodactyloidea). E8 b+ L! o# s: Y
    from China. Proceedings of the National Academy of Sciences. 105 (6):& _3 H0 ?7 r: n" x
    1983-87.& ~  L& K. N7 O& y
    [5] Buffffetaut E, Grigorescu D, Csiki Z. A new giant pterosaur with a robust
    5 h/ Y% w/ ~" B8 \* iskull from the latest cretaceous of Romania. Naturwissenschaften. 89 (4):$ d* O; I7 ?4 @0 i
    180-84.
    2 u+ M, w1 d: d$ H5 ~[6] Devin Powell. Were pterosaurs too big to flfly?
    ; b0 L3 X" P9 ?, U1 n) X; jhttps://www.newscientist.com/article/mg20026763-800-were-pterosaurs
    . x3 L* C# y3 T7 }too-big-to-flfly/
    , c( B3 z2 i$ m, k, J8 F) _- T6 k[7] Templin, R. J.; Chatterjee, Sankar. Posture, locomotion, and paleoecology
    + x, ^( |0 m, D' R$ @; hof pterosaurs. Boulder, Colo: Geological Society of America. p. 60.
    , D1 w2 e$ l" P8 j* g5 k& _[8] Naish, Darren. Pterosaurs breathed in bird-like fashion and had inflflatable7 o8 ^# [/ N* B* n
    air sacs in their wings.
    7 n4 s" \, G+ |3 O$ I0 K, ahttps://scienceblogs.com/tetrapodzoology/2009/02/18/pterosaur
    * E8 e+ B- c8 n; ~" jbreathing-air-sacs: P( i% {' D0 b% u/ u
    [9] Mark Witton. Why pterosaurs weren’t so scary after all., h# v0 r+ [, O$ C- E
    https://www.theguardian.com/science/2013/aug/11/pterosaurs-fossils3 \" e" q" n) K' o% G+ W
    research-mark-witton! e3 r. r0 @# y
    [10] Jeffff Hecht. Did giant pterosaurs vault aloft like vampire bats?
    ; V0 ~" t% [- V9 u- Y5 {/ [https://www.newscientist.com/article/dn19724-did-giant-pterosaurs
    . i5 @5 D5 }. K# z2 z5 ~% E6 Yvault-aloft-like-vampire-bats/. R* Z2 g9 J( }0 S3 |
    / v+ D/ k2 h& K9 O
    20220 B  y1 n+ Q$ r$ U" X% }" T
    Certifificate Authority Cup International Mathematical Contest Modeling
    % Y* m4 y; J1 `6 ahttp://mcm.tzmcm.cn
    4 G- e* e* y2 a1 ]4 F/ p7 m7 ]Problem B (MCM)8 p2 r- M- s/ H2 U$ F4 x, Y9 o
    The Genetic Process of Sequences
    ' p- O; Y0 n7 T/ ]& e5 e& tSequence homology is the biological homology between DNA, RNA, or protein
    " y" D" q& e  ]/ ]( M+ N/ zsequences, defifined in terms of shared ancestry in the evolutionary history of
    . W: \* ]% Z4 E" Ylife[1]. Homology among DNA, RNA, or proteins is typically inferred from their- t7 ?- ~- d+ G8 S, q0 ]$ H$ o
    nucleotide or amino acid sequence similarity. Signifificant similarity is strong
    ; I- F' ~% l5 Bevidence that two sequences are related by evolutionary changes from a common
    9 E  a. i/ n/ n0 \$ [ancestral sequence[2].
      Q& B7 D: E& K( j( b( sConsider the genetic process of a RNA sequence, in which mutations in nu7 a' Z  s4 ^7 O7 K) g; |$ C3 m
    cleotide bases occur by chance. For simplicity, we assume the sequence mutation' w- H+ l: m9 }6 @* [8 j
    arise due to the presence of change (transition or transversion), insertion and
    ; R9 E+ e; d9 i) a& P  Kdeletion of a single base. So we can measure the distance of two sequences by, K, w1 G- M! m, D/ R3 ]
    the amount of mutation points. Multiple base sequences that are close together
    " D( n' g) g9 A  S9 T$ y, B5 S# Mcan form a family, and they are considered homologous.
    6 _' x% {$ D6 c( yYour team are asked to develop a reasonable mathematical model to com1 s% ]. v% R, e4 U4 E. f( M4 F5 x
    plete the following problems.( L- B7 a  s5 T- \
    1. Please design an algorithm that quickly measures the distance between
    : r+ J: d9 d0 ~, l+ @two suffiffifficiently long(> 103 bases) base sequences.( v  @8 x/ P- M( A
    2. Please evaluate the complexity and accuracy of the algorithm reliably, and
    0 r/ {& w0 p; ~( {1 O2 K- e" \design suitable examples to illustrate it.
    ( T" K* D, w& A; J+ v% M  {. l1 ]1 x3. If multiple base sequences in a family have evolved from a common an
    5 V* B* ?: |' Y2 Tcestral sequence, design an effiffifficient algorithm to determine the ancestral
    1 r7 @6 Z( v1 z2 ^8 X4 P! o% k+ |* {: _sequence, and map the genealogical tree.
    2 G" I+ s  o% _References/ v6 T( v" Q$ L% ^- _1 J& O
    [1] Koonin EV. “Orthologs, paralogs, and evolutionary genomics”. Annual Re; b9 E5 g- b. g, i' }
    view of Genetics. 39: 30938, 2005.8 \( c  K! W7 m, `; c8 d% X3 g
    [2] Reeck GR, de Han C, Teller DC, Doolittle RF, Fitch WM, Dickerson RE,
    - S) E5 ]9 }( ?et al. “Homology” in proteins and nucleic acids: a terminology muddle and6 {& J: m' d3 w. i
    a way out of it. Cell. 50 (5): 667, 1987.
    : E2 T5 M8 w7 u: A* H6 q
    . D) J' Z  W* N2 \2022) o! G7 j' e, T1 G, K
    Certifificate Authority Cup International Mathematical Contest Modeling
    0 U- M4 P& x) U8 {( N  p& w; Vhttp://mcm.tzmcm.cn2 M. u! f# e9 x, N/ P3 Z, I5 c
    Problem C (ICM)
    3 [" r, q  ]- @5 UClassify Human Activities4 l8 Z: Q4 p& ]2 N) e
    One important aspect of human behavior understanding is the recognition and- [) ]( U0 I- c% D
    monitoring of daily activities. A wearable activity recognition system can im3 L( e5 k5 S' j  M
    prove the quality of life in many critical areas, such as ambulatory monitor
    & p8 A- |. w" J0 p, \ing, home-based rehabilitation, and fall detection. Inertial sensor based activ8 O. p6 j+ I, b' o* |5 f: x
    ity recognition systems are used in monitoring and observation of the elderly: K) N9 y/ y+ l+ R
    remotely by personal alarm systems[1], detection and classifification of falls[2],
    # s' c: e* k! m. e  Kmedical diagnosis and treatment[3], monitoring children remotely at home or in6 S% P& k. c' J3 w
    school, rehabilitation and physical therapy , biomechanics research, ergonomics,; C' I" _6 L+ q6 e: _8 @- D
    sports science, ballet and dance, animation, fifilm making, TV, live entertain
    # F: v) p6 T" c4 J+ w2 P. j0 zment, virtual reality, and computer games[4]. We try to use miniature inertial
    ) {* u9 g" D: k8 n' Y& @sensors and magnetometers positioned on difffferent parts of the body to classify4 a( R. I7 a# j$ [( a% @
    human activities, the following data were obtained.
    : I( h9 P; N' gEach of the 19 activities is performed by eight subjects (4 female, 4 male,
      |6 u2 W9 l9 `- a; tbetween the ages 20 and 30) for 5 minutes. Total signal duration is 5 minutes* N) u: U1 c/ g' W
    for each activity of each subject. The subjects are asked to perform the activ
    3 H# a/ ?; ~' w3 u. U  Gities in their own style and were not restricted on how the activities should be8 S3 s$ O- x6 J9 u. z- C' i7 A0 A
    performed. For this reason, there are inter-subject variations in the speeds and
    1 y  n6 f1 b1 _' e& e( M) u9 U- Aamplitudes of some activities.- e* V  o+ x- n/ k
    Sensor units are calibrated to acquire data at 25 Hz sampling frequency.2 P3 S( y0 x. M
    The 5-min signals are divided into 5-sec segments so that 480(= 60 × 8) signal: P5 q& @( Y0 C& {3 B
    segments are obtained for each activity., e, g. E$ e: L0 k: i
    The 19 activities are:7 z9 S* }# ~/ g9 X
    1. Sitting (A1);
    ! H0 r+ ?% y. ]0 G% F% @2. Standing (A2);  ]6 k8 @6 P* l' k
    3. Lying on back (A3);) x. [3 {9 `. W9 S, ]6 }! S( Z
    4. Lying on right side (A4);& a6 n, n7 b& h+ g8 u8 ?1 g/ }" t
    5. Ascending stairs (A5);  Z( o+ F. |9 P  L1 Z2 K) Q+ B
    16. Descending stairs (A6);2 c0 E3 i' o3 m5 ]/ v1 E
    7. Standing in an elevator still (A7);# J3 K0 g0 p" F9 h1 a
    8. Moving around in an elevator (A8);9 e& o' {+ a: v" v
    9. Walking in a parking lot (A9);
    0 q% Y! T7 B" u10. Walking on a treadmill with a speed of 4 km/h in flflat position and 15 deg3 p' B: @2 n8 T9 \* r
    inclined positions (A10);
    2 ^, w! ]* p8 A! u11. Walking on a treadmill with a speed of 4 km/h in 15 deg inclined positions
    * K! O( B( Y* x5 u* q(A11);2 ^2 W4 b  l( ~# A( `
    12. Running on a treadmill with a speed of 8 km/h (A12);  E$ i  w7 z' k
    13. Exercising on a stepper (A13);; U8 d# e- k7 B- X- B
    14. Exercising on a cross trainer (A14);# X4 r* j0 w4 @; y3 a9 u
    15. Cycling on an exercise bike in horizontal position (A15);
    / w7 z$ I- \6 Z* F. I+ ~7 o$ v16. Cycling on an exercise bike in vertical position (A16);
    4 L5 {/ Z  S! b1 i4 F, B) }' i17. Rowing (A17);
    9 V1 D# t  A) k8 {* B2 t: L8 k18. Jumping (A18);& r$ X( ~& d) t  [# |, p. l1 ~! o
    19. Playing basketball (A19).( L- f( L4 Y' d2 P0 _- p" [
    Your team are asked to develop a reasonable mathematical model to solve
    8 Q* x/ D7 C# k  o; Z  B" A, ^6 Vthe following problems.
    9 j( e+ [( C8 l, @" p2 V1. Please design a set of features and an effiffifficient algorithm in order to classify
    6 j2 z6 l: `# v, A* v0 ]the 19 types of human actions from the data of these body-worn sensors.
    " Y0 I, E  W: e7 ]8 r7 ]2. Because of the high cost of the data, we need to make the model have3 W7 J# `* Y! k$ J/ J$ D; h) o3 r
    a good generalization ability with a limited data set. We need to study+ t$ P$ c& i  b5 T6 H
    and evaluate this problem specififically. Please design a feasible method to6 e' L. x; p* g0 |7 J  u
    evaluate the generalization ability of your model.
    ' X7 @1 T- b+ B; l$ B/ {  [6 A0 C3. Please study and overcome the overfifitting problem so that your classififi-
    8 n: \- e, y3 ]cation algorithm can be widely used on the problem of people’s action
    ( U! V* V1 q+ D' p$ Dclassifification.
    " F$ J! l: ?) A" uThe complete data can be downloaded through the following link:# c6 C# T- ]0 c2 F+ @
    https://caiyun.139.com/m/i?0F5CJUOrpy8oq
    % X+ s6 S3 |0 w) ?! x4 C0 L2Appendix: File structure# ^" H2 }, X( ]( l1 j
    • 19 activities (a)) n# ~& t5 D5 |( A1 t
    • 8 subjects (p)
    . G* f8 s0 j( A- a! w• 60 segments (s)
    ( E. ?0 F7 g% _2 b& o$ i' U6 B• 5 units on torso (T), right arm (RA), left arm (LA), right leg (RL), left
    1 d* T; {* r$ h/ Y$ M4 Fleg (LL)
    2 P& C* h' p1 \% N1 c8 x# |• 9 sensors on each unit (x, y, z accelerometers, x, y, z gyroscopes, x, y, z
    ' J: B  c1 k1 @/ H( f5 k8 Nmagnetometers)
    + S1 I! F! _( n" c, p+ c* wFolders a01, a02, ..., a19 contain data recorded from the 19 activities.
    / H5 j4 u7 Z- p% S# OFor each activity, the subfolders p1, p2, ..., p8 contain data from each of the8 I+ k4 k1 a$ Y# {7 Z; [% j
    8 subjects.
    6 J  u. i3 B* O3 n! u  T! XIn each subfolder, there are 60 text fifiles s01, s02, ..., s60, one for each; z+ O% h6 S: K4 M  O" h4 b& Y8 }
    segment.* O9 ?0 Y8 b* \$ I1 i
    In each text fifile, there are 5 units × 9 sensors = 45 columns and 5 sec × 25
    ) m3 u" r5 R# d$ T9 O! [2 w( cHz = 125 rows.
    6 j0 _: q' ]- j0 V: @Each column contains the 125 samples of data acquired from one of the
    6 O; t- w1 r% T8 c5 }sensors of one of the units over a period of 5 sec.; B9 [4 X$ Z$ z, R; k7 g
    Each row contains data acquired from all of the 45 sensor axes at a particular$ a6 u& H" f/ M% C1 j
    sampling instant separated by commas.
    " g; o2 a" p  W% H! e( e/ s1 sColumns 1-45 correspond to:
    : g" I9 g) L4 u' A9 T• T_xacc, T_yacc, T_zacc, T_xgyro, ..., T_ymag, T_zmag,
      a- z* k, q2 L7 `) K) S5 _6 _• RA_xacc, RA_yacc, RA_zacc, RA_xgyro, ..., RA_ymag, RA_zmag," }* r9 J$ a- V# ^$ q5 |- e0 l
    • LA_xacc, LA_yacc, LA_zacc, LA_xgyro, ..., LA_ymag, LA_zmag,
    ; `+ A0 x. r; z* m• RL_xacc, RL_yacc, RL_zacc, RL_xgyro, ..., RL_ymag, RL_zmag,
    ' `4 x& P7 P% v6 f) G/ Z6 p• LL_xacc, LL_yacc, LL_zacc, LL_xgyro, ..., LL_ymag, LL_zmag.+ C: G# H5 ?& h8 T$ W3 |' N
    Therefore,
    3 J0 N8 c4 }! G8 b. Z0 M" q• columns 1-9 correspond to the sensors in unit 1 (T),; B7 \0 O0 q  f+ y
    • columns 10-18 correspond to the sensors in unit 2 (RA),( b( A6 ^2 y; m# p$ V' x7 q+ E
    • columns 19-27 correspond to the sensors in unit 3 (LA),# Q5 w, m# G: x5 y& q2 _) a
    • columns 28-36 correspond to the sensors in unit 4 (RL),5 Z) I2 r, R+ e1 _
    • columns 37-45 correspond to the sensors in unit 5 (LL).
    2 s" O- S: v; i& b. K# ?6 ]3References
    5 y  C4 t6 C8 I8 C5 |) M[1] Mathie M.J., Celler B.G., Lovell N.H., Coster A.C.F. Classifification of basic
    1 L5 F  X4 w* g6 Pdaily movements using a triaxial accelerometer. Med. Biol. Eng. Comput.
    ; m8 H: G; W9 b42(5), 679-687, 2004/ W7 L7 R4 u  |5 p) E7 L; U5 f' I
    [2] Kangas M., Konttila A., Lindgren P., Winblad I., Ja¨msa¨ T. Comparison of
    ) D. S% V/ G+ H6 H& Q  d1 f5 Llow-complexity fall detection algorithms for body attached accelerometers./ r' |: ^6 D7 e5 _% k/ n  \
    Gait Posture 28(2), 285-291, 2008  l" q0 S4 x* J
    [3] Wu W.H., Bui A.A.T., Batalin M.A., Liu D., Kaiser W.J. Incremental diag
    + z* v/ q* z0 T: Q4 Qnosis method for intelligent wearable sensor system. IEEE T. Inf. Technol.3 k; N3 Y2 j* r3 x. w7 B$ i2 z
    B. 11(5), 553-562, 2007
    - t' t* u1 c  C& E% U4 b[4] Shiratori T., Hodgins J.K. Accelerometer-based user interfaces for the con* [5 N4 g( {  N0 b7 X  Y$ I! p) p
    trol of a physically simulated character. ACM T. Graphic. 27(5), 2008
    1 b4 K/ ?8 B1 g( U3 Z" q3 {
    0 \: Y& z* ]( m& l( Q4 M2022
    % V! E# L, [) T6 m; M* c0 C/ R# JCertifificate Authority Cup International Mathematical Contest Modeling
    ( Y6 b. S2 Q, a+ x( W6 ?! vhttp://mcm.tzmcm.cn& P. G$ R- r5 i; I. u5 a
    Problem D (ICM)  h* E& g% m+ b0 j; ^  ]6 H' k
    Whether Wildlife Trade Should Be Banned for a Long! m" U# Z' O8 V2 w2 w( o
    Time8 A; Z3 W' p# m1 I6 q$ B% b2 X
    Wild-animal markets are the suspected origin of the current outbreak and the" P+ z4 C' I/ c% t% v$ t
    2002 SARS outbreak, And eating wild meat is thought to have been a source
    4 e  e" C+ t, {# Z. j$ Vof the Ebola virus in Africa. Chinas top law-making body has permanently/ k7 m2 z/ s8 n& i: a% a  C6 o+ |( w
    tightened rules on trading wildlife in the wake of the coronavirus outbreak,9 x: M6 D  r; T% M4 S
    which is thought to have originated in a wild-animal market in Wuhan. Some
    " E( L6 K. e2 P2 d% z$ Rscientists speculate that the emergency measure will be lifted once the outbreak
    8 }) h  I" Z& m5 Zends.
    7 o( x1 e( m3 C7 VHow the trade in wildlife products should be regulated in the long term?
      C: _: w5 }$ _2 s2 JSome researchers want a total ban on wildlife trade, without exceptions, whereas6 v' n$ J' T  W. i5 O. [6 x
    others say sustainable trade of some animals is possible and benefificial for peo
    8 ?0 A1 _; }' ?ple who rely on it for their livelihoods. Banning wild meat consumption could
    2 C$ Z, \$ x8 ?0 c% V/ h# q7 v' acost the Chinese economy 50 billion yuan (US $ 7.1 billion) and put one mil
    - [) o5 Z9 W' h; J9 b! Glion people out of a job, according to estimates from the non-profifit Society of
    # h4 k9 G) r! |Entrepreneurs and Ecology in Beijing.
    5 v  b; H9 x. B; c/ M8 dA team led by Shi Zheng-Li and Cui Jie of the Wuhan Institute of Virology
    1 ~  x7 T( `+ p6 T5 Qin China, chasing the origin of the deadly SARS virus, have fifinally found their1 P% _7 Q2 [* Y: ^1 z% L6 v8 ~" z
    smoking gun in 2017. In a remote cave in Yunnan province, virologists have
    " S- j3 C/ p( M9 L; g/ t- H5 K  Eidentifified a single population of horseshoe bats that harbours virus strains with3 F$ i2 ?% m1 C! \( Z( m. H
    all the genetic building blocks of the one that jumped to humans in 2002, killing6 E- h+ e4 @# L: T1 m8 Z; C, {$ y9 O
    almost 800 people around the world. The killer strain could easily have arisen
      Y4 ~% D% K7 Sfrom such a bat population, the researchers report in PLoS Pathogens on 30
    ( q. B' m: n5 I' C; C" _9 gNovember, 2017. Another outstanding question is how a virus from bats in
    7 |5 ?$ G' [' @Yunnan could travel to animals and humans around 1,000 kilometres away in6 W9 h; {8 S+ q
    Guangdong, without causing any suspected cases in Yunnan itself. Wildlife0 _- b6 W! _! @" g4 O
    trade is the answer. Although wild animals are cooked at high temperature
    0 W2 U9 T7 l2 }: m" Fwhen eating, some viruses are diffiffifficult to survive, humans may come into contact
    # p- p8 g( |0 D5 H' Pwith animal secretions in the wildlife market. They warn that the ingredients
    , V- ?  i$ x  a/ Aare in place for a similar disease to emerge again.
    0 y8 E# x- r3 {2 M9 H5 iWildlife trade has many negative effffects, with the most important ones being:
    1 t) x( J: v6 u5 t" p) X) z% r1Figure 1: Masked palm civets sold in markets in China were linked to the SARS
    # `; S4 I( A; {' H9 t6 Voutbreak in 2002.Credit: Matthew Maran/NPL( F) H& \! A/ f( }" F0 c
    • Decline and extinction of populations
    & ^! H- K7 U/ Y: m. a- D" a• Introduction of invasive species+ e6 }( _6 [6 C
    • Spread of new diseases to humans% |4 |( N' d$ L0 N2 L5 y7 l8 G: g5 D
    We use the CITES trade database as source for my data. This database% Y2 k9 ]' D; M: y
    contains more than 20 million records of trade and is openly accessible. The* {* E& I6 d- [+ q* l( d5 a
    appendix is the data on mammal trade from 1990 to 2021, and the complete9 q, T. @/ D# T/ ~) b9 W
    database can also be obtained through the following link:* R' e! I) c+ K: g& `( {' q- X# R
    https://caiyun.139.com/m/i?0F5CKACoDDpEJ4 E1 J1 M1 Q3 k/ c( E: y8 I
    Requirements Your team are asked to build reasonable mathematical mod
    ' u+ z7 a: Q3 u: M) P4 jels, analyze the data, and solve the following problems:! c+ e* m) N  b. O3 s  Z
    1. Which wildlife groups and species are traded the most (in terms of live/ x7 y! z8 S. C
    animals taken from the wild)?9 ^" l0 G) u) o& H: }/ P( P8 e
    2. What are the main purposes for trade of these animals?
    ! Q5 k1 @+ c6 T  g3. How has the trade changed over the past two decades (2003-2022)?0 [" x* A# g$ U' d. W
    4. Whether the wildlife trade is related to the epidemic situation of major! b3 L1 D' Q0 Q- V! y) Q# K7 N
    infectious diseases?2 d% i7 H: i- c7 N- }
    25. Do you agree with banning on wildlife trade for a long time? Whether it
    1 X1 g, J3 R$ {7 W5 D' E( c1 swill have a great impact on the economy and society, and why?* d/ c! i( a. }" _5 Z9 O2 U
    6. Write a letter to the relevant departments of the US government to explain) ?9 ^4 @7 v' O  O3 g: ~
    your views and policy suggestions.
    $ p8 h4 ]* [0 q8 I0 m  @+ `3 R( g8 P; j3 a+ s  f1 r
    : l. n% G5 Y* V

    2 @6 D: Q9 g! ]& U' H; k3 e6 O4 L7 @" R
    . l: ~1 {  r  ?. U. P6 q- F2 j2 R
    3 F& M7 [; ?$ g, c7 s7 B( Z

    % ]( P3 a! o1 a4 G) b

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