QQ登录

只需要一步,快速开始

 注册地址  找回密码
查看: 13416|回复: 6
打印 上一主题 下一主题

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

[复制链接]
字体大小: 正常 放大
ilikenba 实名认证       

1万

主题

49

听众

2万

积分

  • TA的每日心情
    奋斗
    2024-6-23 05:14
  • 签到天数: 1043 天

    [LV.10]以坛为家III

    社区QQ达人 新人进步奖 优秀斑竹奖 发帖功臣

    群组万里江山

    群组sas讨论小组

    群组长盛证券理财有限公司

    群组C 语言讨论组

    群组Matlab讨论组

    跳转到指定楼层
    1#
    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 3 p& q+ O- a$ {8 r0 X7 h% F
    https://caiyun.139.com/m/i?0F5CJAMhGgSJx: i( \' S" |0 o3 }' r5 b7 c* |
    2 r: X/ |, Y% l2 J( w  A8 x8 j* g0 ^
    2022
    0 r# r5 K. h( P- i$ R) d( F7 }" kCertifificate Authority Cup International Mathematical Contest Modeling# B" B! u' t) L
    http://mcm.tzmcm.cn3 N4 d! f. O5 Y6 h
    Problem A (MCM); C- ~5 D4 d$ w# C; `* }, j# g% }
    How Pterosaurs Fly
    - b. G+ I) I* |9 t' M0 aPterosaurs is an extinct clade of flflying reptiles in the order, Pterosauria. They4 z. e' j) d; [$ L- ^2 ^
    existed during most of the Mesozoic: from the Late Triassic to the end of8 J7 ?% `; L  m8 l* v
    the Cretaceous. Pterosaurs are the earliest vertebrates known to have evolved) q7 D' u5 o/ ?  K
    powered flflight. Their wings were formed by a membrane of skin, muscle, and
    9 E1 p% t# M7 u7 R1 |9 Q" t) aother tissues stretching from the ankles to a dramatically lengthened fourth
      ~- Z4 J5 w+ X( Sfifinger[1].2 u- R6 P2 |, V8 G6 Z
    There were two major types of pterosaurs. Basal pterosaurs were smaller& W) O7 Z3 @( _( }- {4 D5 h' ~8 H
    animals with fully toothed jaws and long tails usually. Their wide wing mem2 I* N% p+ ^3 b* r0 {; V
    branes probably included and connected the hind legs. On the ground, they) m  c3 E( ~" h2 }5 _( ]
    would have had an awkward sprawling posture, but their joint anatomy and
    ) q  i6 U5 @/ ~2 R  {0 |; nstrong claws would have made them effffective climbers, and they may have lived
    , e8 L& v1 {% g0 M( b$ Fin trees. Basal pterosaurs were insectivores or predators of small vertebrates.
    / q$ B, g/ {, jLater pterosaurs (pterodactyloids) evolved many sizes, shapes, and lifestyles.' l; e0 c" Z4 A- H
    Pterodactyloids had narrower wings with free hind limbs, highly reduced tails,
    ! o& Y+ G! i% {and long necks with large heads. On the ground, pterodactyloids walked well on* C' V7 S5 O$ s
    all four limbs with an upright posture, standing plantigrade on the hind feet and
    7 f& r/ b3 _4 ?! A; Ifolding the wing fifinger upward to walk on the three-fifingered “hand”. The fossil& x9 Q' K8 X5 a; ^& O
    trackways show at least some species were able to run and wade or swim[2].: j9 V' Y8 ~# u  U! S
    Pterosaurs sported coats of hair-like fifilaments known as pycnofifibers, which
    7 k% d* R& a* }% b) G' tcovered their bodies and parts of their wings[3]. In life, pterosaurs would have0 C& G0 ^5 r( H* a$ Q1 w
    had smooth or flfluffffy coats that did not resemble bird feathers. Earlier sug  W4 L$ f' L  O  S6 p( U3 s9 L
    gestions were that pterosaurs were largely cold-blooded gliding animals, de) l* R+ i! {, ^' g1 i# x" B
    riving warmth from the environment like modern lizards, rather than burning/ X- p: N$ t1 m/ R7 D
    calories. However, later studies have shown that they may be warm-blooded
    : |8 M4 u6 S" }  c(endothermic), active animals. The respiratory system had effiffifficient unidirec
    , a+ a: G" W0 Jtional “flflow-through” breathing using air sacs, which hollowed out their bones- v3 p  G9 {7 R2 T/ |/ z
    to an extreme extent. Pterosaurs spanned a wide range of adult sizes, from
    : Z4 x/ K  ~8 d# @' W* \" H4 \the very small anurognathids to the largest known flflying creatures, including$ N3 d  d8 j: d4 e! `% q& e
    Quetzalcoatlus and Hatzegopteryx[4][5], which reached wingspans of at least
    7 P8 x" e8 V  s. _5 L9 w2 Hnine metres. The combination of endothermy, a good oxygen supply and strong
    1 V( Q+ m% A9 A  U1muscles made pterosaurs powerful and capable flflyers.& [/ D; \; i. R( o
    The mechanics of pterosaur flflight are not completely understood or modeled
    / Z) m0 r3 G. a: @0 ^: aat this time. Katsufumi Sato did calculations using modern birds and concluded6 N$ d! n, t) D! H/ h# W
    that it was impossible for a pterosaur to stay aloft[6]. In the book Posture,
    ) B# u! V3 c  X8 s/ D! e& dLocomotion, and Paleoecology of Pterosaurs it is theorized that they were able6 m( C" x& E- F7 O9 _1 Y
    to flfly due to the oxygen-rich, dense atmosphere of the Late Cretaceous period[7].
    / l- B' T+ C. v2 Q& ]3 d8 HHowever, both Sato and the authors of Posture, Locomotion, and Paleoecology
    2 ]0 ?, b1 ]" K" y: Qof Pterosaurs based their research on the now-outdated theories of pterosaurs! |3 I3 ^' }- q( p( ^- f
    being seabird-like, and the size limit does not apply to terrestrial pterosaurs,3 n7 b+ k+ ~( ]: m
    such as azhdarchids and tapejarids. Furthermore, Darren Naish concluded that
    0 Z- |# z0 o" {6 K: V) C# E* U% vatmospheric difffferences between the present and the Mesozoic were not needed
      D- |  Z& r; m5 L2 N5 }' Mfor the giant size of pterosaurs[8].1 |7 `& Q# f# i- N! \
    Another issue that has been diffiffifficult to understand is how they took offff.
    2 j- @( i3 c, jIf pterosaurs were cold-blooded animals, it was unclear how the larger ones
    , k1 L4 C! J* G7 T0 eof enormous size, with an ineffiffifficient cold-blooded metabolism, could manage" W) V* }# y/ C2 U
    a bird-like takeoffff strategy, using only the hind limbs to generate thrust for9 K$ ?7 U$ F/ G) ]
    getting airborne. Later research shows them instead as being warm-blooded) x+ ^+ Q% b# r+ }9 B, \' b+ a: l
    and having powerful flflight muscles, and using the flflight muscles for walking as0 O( h1 W* K/ |% k- |% s) x, n/ v
    quadrupeds[9]. Mark Witton of the University of Portsmouth and Mike Habib of
    ( V; Q: M8 Z9 f, r6 O! i) ~3 P( [Johns Hopkins University suggested that pterosaurs used a vaulting mechanism* N3 g, t& C6 R' y2 h
    to obtain flflight[10]. The tremendous power of their winged forelimbs would: j$ E! d& v0 S# A, x5 h
    enable them to take offff with ease[9]. Once aloft, pterosaurs could reach speeds
    / D: u( E6 Z, hof up to 120 km/h and travel thousands of kilometres[10].* X) C. B# ]3 K
    Your team are asked to develop a reasonable mathematical model of the: {/ x$ Q2 q* E. \! f! p! D
    flflight process of at least one large pterosaur based on fossil measurements and
    + w# y& V) _3 z$ E. uto answer the following questions.9 [: r6 Z- w$ A5 l
    1. For your selected pterosaur species, estimate its average speed during nor
    4 M- A1 M2 Y! a* n) M) Omal flflight.
    % Y  K3 d7 z/ W' x- K2. For your selected pterosaur species, estimate its wing-flflap frequency during
    # O  C" g: e2 onormal flflight./ P8 p, b) x  C6 P: w
    3. Study how large pterosaurs take offff; is it possible for them to take offff like
    ! G4 b! e" ]4 B5 z+ Tbirds on flflat ground or on water? Explain the reasons quantitatively.- j# ~6 @+ B( g1 @5 B5 {. j
    References
    ) W3 q) g) S$ r7 ?( I[1] Elgin RA, Hone DW, Frey E (2011). The Extent of the Pterosaur Flight& ]9 A" D( H! c' }  d. |
    Membrane. Acta Palaeontologica Polonica. 56 (1): 99-111.: J% e% ?: @2 q3 z. G1 o% {; q
    2[2] Mark Witton. Terrestrial Locomotion.7 D: o5 k, @0 _6 @
    https://pterosaur.net/terrestrial locomotion.php2 c: q7 L, Y% m! p' [+ \, Y
    [3] Laura Geggel. It’s Offiffifficial: Those Flying Reptiles Called Pterosaurs
    7 y, R) r. i# ?9 CWere Covered in Fluffffy Feathers. https://www.livescience.com/64324-
    4 A1 [% Z; P/ S7 C4 Apterosaurs-had-feathers.html, d5 x$ t1 D4 [; y4 G* s
    [4] Wang, X.; Kellner, A.W.A.; Zhou, Z.; Campos, D.A. (2008). Discovery of a
    0 ]" u# d+ Z) [) |: N4 ]  @/ Yrare arboreal forest-dwelling flflying reptile (Pterosauria, Pterodactyloidea)0 F% _) k, q. t: M" u  L
    from China. Proceedings of the National Academy of Sciences. 105 (6):
    ( \- k) \5 |8 \* X! e5 j1983-87.
    1 h6 W: W# C7 K' n5 P5 V, @1 ~[5] Buffffetaut E, Grigorescu D, Csiki Z. A new giant pterosaur with a robust
    , a/ B1 `- n; x) C. Askull from the latest cretaceous of Romania. Naturwissenschaften. 89 (4):4 n9 n) l3 F8 d; b4 C  H: y( O
    180-84.
    0 v1 t9 o; z; f5 t/ o+ c[6] Devin Powell. Were pterosaurs too big to flfly?
    $ O3 Q, z6 k( D; n4 mhttps://www.newscientist.com/article/mg20026763-800-were-pterosaurs. B+ Y8 m/ }5 P( [  l$ }% A* ~  E
    too-big-to-flfly/
    : `  b* \# a3 `) Y' s3 `[7] Templin, R. J.; Chatterjee, Sankar. Posture, locomotion, and paleoecology# h' `4 ~; S3 v
    of pterosaurs. Boulder, Colo: Geological Society of America. p. 60.5 l8 k2 K! \5 e5 N& H
    [8] Naish, Darren. Pterosaurs breathed in bird-like fashion and had inflflatable
    # Q, P7 c" K, T) ^air sacs in their wings.) \* F+ d( A+ L  ~& T$ J" {
    https://scienceblogs.com/tetrapodzoology/2009/02/18/pterosaur
    7 j% ]) e4 m: R. \# W2 W/ H6 hbreathing-air-sacs
    1 D2 f, P/ S8 j9 c: c0 e! A: [* `[9] Mark Witton. Why pterosaurs weren’t so scary after all.
    1 d0 G$ M. O7 Y3 r, Ahttps://www.theguardian.com/science/2013/aug/11/pterosaurs-fossils
    1 \$ C' T  f2 A+ _8 ?3 ~9 ~* dresearch-mark-witton! R' Q1 I& L; S( O1 J  w
    [10] Jeffff Hecht. Did giant pterosaurs vault aloft like vampire bats?
      x6 L1 G8 \9 `7 G  mhttps://www.newscientist.com/article/dn19724-did-giant-pterosaurs
    1 y7 ^# l5 C# X2 B4 X) Z5 V9 m: g) ~vault-aloft-like-vampire-bats/; T2 d% l+ t) q7 y8 W1 D" i: C
    3 Y3 d' j# L  c2 @: b
    2022
    ' ?5 E: b* P: j/ U( b) F. tCertifificate Authority Cup International Mathematical Contest Modeling
    " I9 G$ Z  y7 I3 F: `7 @http://mcm.tzmcm.cn! f/ ^1 B$ e+ ?0 A$ N5 V9 H* ?# x
    Problem B (MCM); F: q) a) s+ X6 u; |+ L& w
    The Genetic Process of Sequences
    : c" g% C  v2 s" T5 a3 f7 l1 _Sequence homology is the biological homology between DNA, RNA, or protein
    9 K" `3 _. x+ fsequences, defifined in terms of shared ancestry in the evolutionary history of
      N# S3 ?8 {# P: D0 e$ Q" dlife[1]. Homology among DNA, RNA, or proteins is typically inferred from their* R3 G# q4 H; E! M" F$ F; p6 b, t
    nucleotide or amino acid sequence similarity. Signifificant similarity is strong
    ; p, b5 Y4 g1 _+ Z7 b. o' Fevidence that two sequences are related by evolutionary changes from a common
      P; A, D! m0 {* L2 D9 y0 k4 Z' W5 ~ancestral sequence[2].) j& \2 [6 l) y8 r
    Consider the genetic process of a RNA sequence, in which mutations in nu
    1 T1 P* q* _1 b% Xcleotide bases occur by chance. For simplicity, we assume the sequence mutation! g5 t2 V8 `% d8 B4 O
    arise due to the presence of change (transition or transversion), insertion and0 S- h% t9 ~7 w% c; w( E# c
    deletion of a single base. So we can measure the distance of two sequences by$ X2 h7 y5 `( k! x- H/ r
    the amount of mutation points. Multiple base sequences that are close together
    / H3 \) k, A' @% s  Y8 Z: Dcan form a family, and they are considered homologous.6 |, i% h6 G  _: ~  T: H: j
    Your team are asked to develop a reasonable mathematical model to com1 K8 j; i. Y! d; M) A2 \
    plete the following problems.0 A, p. l: ~6 e1 \, ~) `# {. {
    1. Please design an algorithm that quickly measures the distance between
    . l# ^- i# p, Q1 V8 Ftwo suffiffifficiently long(> 103 bases) base sequences., }2 E5 w2 h% T  B4 O1 v
    2. Please evaluate the complexity and accuracy of the algorithm reliably, and
    / _& G9 O9 H9 ]4 Q& R+ Jdesign suitable examples to illustrate it.! I* h7 t/ S) ~
    3. If multiple base sequences in a family have evolved from a common an
    6 x2 w2 T( E! R0 tcestral sequence, design an effiffifficient algorithm to determine the ancestral; [8 r2 B) ]1 O
    sequence, and map the genealogical tree.
    9 X2 \+ z0 o5 o/ z3 B3 R, IReferences  _6 |9 o' U7 r3 ], ^  C/ ~! Q
    [1] Koonin EV. “Orthologs, paralogs, and evolutionary genomics”. Annual Re
    / b3 ~7 e7 o/ |" I" N+ lview of Genetics. 39: 30938, 2005.4 F0 Y: Z0 N0 ^2 w/ E# x1 z
    [2] Reeck GR, de Han C, Teller DC, Doolittle RF, Fitch WM, Dickerson RE,
    # n1 \; {4 s- [& D0 `1 ket al. “Homology” in proteins and nucleic acids: a terminology muddle and
    & }! B0 C$ E) x0 }a way out of it. Cell. 50 (5): 667, 1987.. R. l' _6 m6 \) d0 k) c. W( D

    % h: M; X: ?" F20222 C( e9 {) E7 R, O5 f( J7 G
    Certifificate Authority Cup International Mathematical Contest Modeling+ k* y5 R% D& ]+ ?# ^
    http://mcm.tzmcm.cn
    7 e+ K3 }! S/ \2 o, ~6 ~Problem C (ICM)8 J' r9 F3 {7 R; v
    Classify Human Activities
    $ o0 k# m: ~4 U* Q/ G3 `One important aspect of human behavior understanding is the recognition and
    4 A% m" w5 V+ D# c  ymonitoring of daily activities. A wearable activity recognition system can im
    & i' u$ a) O( j. F: i6 }prove the quality of life in many critical areas, such as ambulatory monitor5 `7 w' D( O# ]
    ing, home-based rehabilitation, and fall detection. Inertial sensor based activ8 j" N  T- _4 W. }
    ity recognition systems are used in monitoring and observation of the elderly
    * X1 ^/ P5 U/ U) r' X  B2 Gremotely by personal alarm systems[1], detection and classifification of falls[2],
    7 [/ f1 t+ b8 f0 o% D4 A4 ^medical diagnosis and treatment[3], monitoring children remotely at home or in
    0 a2 M% V# G) t- d5 v4 @( Fschool, rehabilitation and physical therapy , biomechanics research, ergonomics,
    - Q9 Z5 {; \2 `sports science, ballet and dance, animation, fifilm making, TV, live entertain: t* I0 L2 ?  O$ b
    ment, virtual reality, and computer games[4]. We try to use miniature inertial, E+ |% l7 i( {
    sensors and magnetometers positioned on difffferent parts of the body to classify! [0 W5 ]- i- M3 i
    human activities, the following data were obtained.
    1 j; m5 R0 D! U; A2 pEach of the 19 activities is performed by eight subjects (4 female, 4 male,
    - V* o( w8 J8 ybetween the ages 20 and 30) for 5 minutes. Total signal duration is 5 minutes5 J: m: a  J! J
    for each activity of each subject. The subjects are asked to perform the activ8 }7 t0 w( \: F, ?, {% I5 W$ X7 |
    ities in their own style and were not restricted on how the activities should be! h6 B( l8 x, U' [9 N0 u, E
    performed. For this reason, there are inter-subject variations in the speeds and
    ( C. u2 U8 [! samplitudes of some activities./ Z7 |6 a% }  f1 q
    Sensor units are calibrated to acquire data at 25 Hz sampling frequency.
    ( H3 U& M! f7 {1 W! K$ \2 Z: d- |& qThe 5-min signals are divided into 5-sec segments so that 480(= 60 × 8) signal- O- \# i7 Q! V9 b
    segments are obtained for each activity.
    8 ^' d- Y& o8 B7 XThe 19 activities are:9 W8 Z; }9 M: ?4 S! {/ B
    1. Sitting (A1);% z3 C% Z9 }' X1 A2 e6 J# n
    2. Standing (A2);
    - s: F/ V7 z% ?6 R! G3. Lying on back (A3);
    & R) F0 T( G" A1 z+ T8 f" `4. Lying on right side (A4);
    ) K* g  U. s, T5 ]6 c5. Ascending stairs (A5);
    $ o# F: z7 h; e( }16. Descending stairs (A6);1 r5 t1 }$ A, f* d
    7. Standing in an elevator still (A7);6 D9 j; g5 O8 O$ [
    8. Moving around in an elevator (A8);
    ( f3 n0 m2 v8 H9. Walking in a parking lot (A9);
    ) K- W+ b4 Y" A- M0 M0 ~10. Walking on a treadmill with a speed of 4 km/h in flflat position and 15 deg
    * E* `* ~" d6 O/ H( Y/ k6 Xinclined positions (A10);9 ~) i( X$ \: w4 }% J5 C! G
    11. Walking on a treadmill with a speed of 4 km/h in 15 deg inclined positions
    7 p1 r7 L0 r1 X. U(A11);9 y0 L, L+ t0 {0 i! a+ c8 g
    12. Running on a treadmill with a speed of 8 km/h (A12);
    3 h" a. [- Z$ x, w$ M& p# b! Q* p13. Exercising on a stepper (A13);
    7 I0 `( K# k  ~6 y8 R2 W. c14. Exercising on a cross trainer (A14);4 F/ s! M$ E+ P+ K; V, ~
    15. Cycling on an exercise bike in horizontal position (A15);; d2 k1 S$ `6 h1 E" Y9 d0 n$ E
    16. Cycling on an exercise bike in vertical position (A16);2 |, x$ n  a; H' v/ h3 I5 ^0 D
    17. Rowing (A17);
    1 t, J7 C: ?! K. L& H18. Jumping (A18);7 d0 H; i, A1 ^0 O% L/ A: M" @* x
    19. Playing basketball (A19).
    + |- m: G+ J0 M6 U5 kYour team are asked to develop a reasonable mathematical model to solve4 U2 k9 F2 |" E/ h: P4 \  @
    the following problems.
    3 ]: X5 x/ U2 c! q/ C2 v1. Please design a set of features and an effiffifficient algorithm in order to classify
    - w8 I) r( W7 t$ p; Vthe 19 types of human actions from the data of these body-worn sensors.6 K$ p  o0 g' ~6 Y  _" A
    2. Because of the high cost of the data, we need to make the model have, X. g: C' h1 v- m2 s+ z
    a good generalization ability with a limited data set. We need to study
    " S! Y# o, ]/ ~, v+ l/ y. Vand evaluate this problem specififically. Please design a feasible method to* q8 I5 k, p* N% Y: b
    evaluate the generalization ability of your model.
    " n$ V8 P9 K: V( w3. Please study and overcome the overfifitting problem so that your classififi-/ I! \: ~  i# d9 R# m2 |
    cation algorithm can be widely used on the problem of people’s action1 U" l) @. ?0 R( Q
    classifification.; g1 B+ q$ k5 V( b" P
    The complete data can be downloaded through the following link:
    5 }  J/ k) T( ?2 Ahttps://caiyun.139.com/m/i?0F5CJUOrpy8oq
    2 J5 Q' `5 c5 z' o2Appendix: File structure; x! y* _* Z" c* H8 I- a! q& K
    • 19 activities (a). z7 W. P2 {( W# p, o+ q1 ?
    • 8 subjects (p)
    ' m* _5 T% X- ?3 D• 60 segments (s)
    % R0 q/ x5 k3 ]) E; [3 A$ N& B: W• 5 units on torso (T), right arm (RA), left arm (LA), right leg (RL), left4 b3 p$ F- L1 \3 y
    leg (LL)
    & w6 `1 P/ R5 f! q/ W( ^• 9 sensors on each unit (x, y, z accelerometers, x, y, z gyroscopes, x, y, z
    ) j, ?) }, T6 J, Pmagnetometers)2 R$ J, n1 s) }$ m. I- q" ]
    Folders a01, a02, ..., a19 contain data recorded from the 19 activities.
    # F$ X$ `3 ^; n  `" ?1 LFor each activity, the subfolders p1, p2, ..., p8 contain data from each of the
    3 h4 ?4 m' m% `5 A: u8 subjects.
    4 B4 z4 l/ y! ?# s5 B- _, X8 XIn each subfolder, there are 60 text fifiles s01, s02, ..., s60, one for each
    ) G' T! C/ w# m+ ?0 `4 u7 psegment.) g/ K7 |& `& c$ c, }( k
    In each text fifile, there are 5 units × 9 sensors = 45 columns and 5 sec × 25' h: C: z3 A0 \- b0 O
    Hz = 125 rows.* `" @  I. a0 F, d; n2 ]5 Q* f' R
    Each column contains the 125 samples of data acquired from one of the
    , _6 m1 E+ D7 c/ x! _4 Q" W% R7 tsensors of one of the units over a period of 5 sec.
    3 [8 K+ Y7 a, _+ hEach row contains data acquired from all of the 45 sensor axes at a particular0 t: _" k8 X7 {, C9 N) W( Z* S
    sampling instant separated by commas.9 \  k* \, Z: k$ H2 A6 d$ X* t
    Columns 1-45 correspond to:
    0 {2 ^( l2 `/ o, C+ A5 m• T_xacc, T_yacc, T_zacc, T_xgyro, ..., T_ymag, T_zmag,
    ' r  M' W$ s9 W8 B. f, \$ d7 Z• RA_xacc, RA_yacc, RA_zacc, RA_xgyro, ..., RA_ymag, RA_zmag,# }5 Z" O2 }  J5 _
    • LA_xacc, LA_yacc, LA_zacc, LA_xgyro, ..., LA_ymag, LA_zmag,
    - M6 I- O' U- i1 x• RL_xacc, RL_yacc, RL_zacc, RL_xgyro, ..., RL_ymag, RL_zmag,* T( c* _9 M. p! a
    • LL_xacc, LL_yacc, LL_zacc, LL_xgyro, ..., LL_ymag, LL_zmag.
    " d& ~7 R1 e$ ?2 TTherefore,: M0 r( l5 W" J& g1 x/ j
    • columns 1-9 correspond to the sensors in unit 1 (T),
    8 N: V; f- Q6 o: c5 \+ [• columns 10-18 correspond to the sensors in unit 2 (RA),' ?# z$ s5 D& j( X1 o
    • columns 19-27 correspond to the sensors in unit 3 (LA),
    % s" h$ N, w# |. s• columns 28-36 correspond to the sensors in unit 4 (RL),8 @/ e- ^! B0 M9 T2 g) b
    • columns 37-45 correspond to the sensors in unit 5 (LL).3 }5 J" ~" j. x
    3References- Y. i. ^2 c  t2 s8 ?$ K3 ]! d5 o
    [1] Mathie M.J., Celler B.G., Lovell N.H., Coster A.C.F. Classifification of basic
    4 ?* [+ _5 `8 m- R* h9 Zdaily movements using a triaxial accelerometer. Med. Biol. Eng. Comput.! u8 B+ @. {  z7 W* d
    42(5), 679-687, 2004% |/ s: E9 X* j. M% u
    [2] Kangas M., Konttila A., Lindgren P., Winblad I., Ja¨msa¨ T. Comparison of8 [, {# R5 r2 X- }' f& E/ ~
    low-complexity fall detection algorithms for body attached accelerometers.4 }* i% G/ a4 @) g5 E/ b
    Gait Posture 28(2), 285-291, 20084 b; F5 }! F6 `
    [3] Wu W.H., Bui A.A.T., Batalin M.A., Liu D., Kaiser W.J. Incremental diag6 `  ?4 q5 y2 w: s* z( u  O
    nosis method for intelligent wearable sensor system. IEEE T. Inf. Technol.' I, ?7 }5 M& u" y& T  D3 `
    B. 11(5), 553-562, 20073 `7 g3 Y8 x9 V7 q8 S
    [4] Shiratori T., Hodgins J.K. Accelerometer-based user interfaces for the con
    8 O7 T2 ^/ a1 D/ T. l3 otrol of a physically simulated character. ACM T. Graphic. 27(5), 2008
    : [* \* p- z* Y1 e
      v+ |' i; j/ n& {: n0 I$ u  N- |2022( V1 f' R" u) B( m) w. d- g$ o
    Certifificate Authority Cup International Mathematical Contest Modeling1 d8 j% ]* U2 J, l
    http://mcm.tzmcm.cn6 Y+ O5 [0 m9 @& d: C9 ]' e" p3 T
    Problem D (ICM)) N4 ~. ^3 P* k8 b
    Whether Wildlife Trade Should Be Banned for a Long
    ' y! n1 ]% k3 Z; A2 m- |, iTime
    1 p6 e+ B3 M4 q2 x( {) fWild-animal markets are the suspected origin of the current outbreak and the
    # \4 J& w0 `+ l5 Z2002 SARS outbreak, And eating wild meat is thought to have been a source
    & Q) I" {) O% Uof the Ebola virus in Africa. Chinas top law-making body has permanently$ g) r8 ?' |+ L% l0 e+ C" F1 n2 T
    tightened rules on trading wildlife in the wake of the coronavirus outbreak,* D- \6 y$ b( U0 A
    which is thought to have originated in a wild-animal market in Wuhan. Some
    ) t4 Q9 X, @7 a  d0 h- Nscientists speculate that the emergency measure will be lifted once the outbreak6 A7 F7 Q  x- Z* z8 u7 Y
    ends.
    9 ^% V9 n5 g0 d, T8 yHow the trade in wildlife products should be regulated in the long term?. p! q$ Q% x8 R
    Some researchers want a total ban on wildlife trade, without exceptions, whereas
    * ]- }; V9 S- o3 y- ~others say sustainable trade of some animals is possible and benefificial for peo
    : T" ^; M" e' F; k5 Aple who rely on it for their livelihoods. Banning wild meat consumption could9 U- c" C1 ]- f- J
    cost the Chinese economy 50 billion yuan (US $ 7.1 billion) and put one mil
    5 J) x' I" a5 u9 k% i; D2 Olion people out of a job, according to estimates from the non-profifit Society of
    3 ~% }6 f2 M7 C' C1 P! a3 nEntrepreneurs and Ecology in Beijing.# L8 h" Y" t3 I% T
    A team led by Shi Zheng-Li and Cui Jie of the Wuhan Institute of Virology2 a" H* {' k8 ]6 l) w
    in China, chasing the origin of the deadly SARS virus, have fifinally found their
    # `4 E  E& h4 `  O* u+ C) c$ Z6 ^smoking gun in 2017. In a remote cave in Yunnan province, virologists have
    8 e$ z7 j% `5 b. Y2 m- pidentifified a single population of horseshoe bats that harbours virus strains with
    $ g5 V' q" o& k, p: Vall the genetic building blocks of the one that jumped to humans in 2002, killing1 m1 E  g' G" A
    almost 800 people around the world. The killer strain could easily have arisen4 ?) P  `- Q, u1 g7 @& q' a
    from such a bat population, the researchers report in PLoS Pathogens on 30
    ! D# m1 x9 S  Q( SNovember, 2017. Another outstanding question is how a virus from bats in
    $ @( i" n' u! L% Q! o& F6 GYunnan could travel to animals and humans around 1,000 kilometres away in
    - P8 R& I+ Y! Y* Z( xGuangdong, without causing any suspected cases in Yunnan itself. Wildlife
    8 b8 [" Y8 \* I) X1 ttrade is the answer. Although wild animals are cooked at high temperature
    ) v2 I7 r! c2 K$ H* Y% Twhen eating, some viruses are diffiffifficult to survive, humans may come into contact
    ( e' v* f. a) }6 t3 _/ [with animal secretions in the wildlife market. They warn that the ingredients0 z& p' M+ w% D# {- H* o
    are in place for a similar disease to emerge again.$ A" I- h" u' @9 ]2 s* I
    Wildlife trade has many negative effffects, with the most important ones being:
    * B5 m! b. ~! W/ u1Figure 1: Masked palm civets sold in markets in China were linked to the SARS7 Q# p- f* t! |; c" ^( w6 @
    outbreak in 2002.Credit: Matthew Maran/NPL3 \& f6 p# n. }! b
    • Decline and extinction of populations$ B9 f+ E! I4 T& E1 F
    • Introduction of invasive species2 I) J$ @/ n+ o0 Q
    • Spread of new diseases to humans: b. S( a( f0 J* }
    We use the CITES trade database as source for my data. This database
    % H# U: u0 g9 U  Y' l! Jcontains more than 20 million records of trade and is openly accessible. The
    0 l$ Y7 x9 Y* H" G! s* Kappendix is the data on mammal trade from 1990 to 2021, and the complete
    8 W' I, q0 `3 g% Jdatabase can also be obtained through the following link:
    6 ?  S+ N+ k# P$ Rhttps://caiyun.139.com/m/i?0F5CKACoDDpEJ
    " _# ^+ v* B$ l* sRequirements Your team are asked to build reasonable mathematical mod
    $ n( U1 T+ W$ y% o9 k, W. Vels, analyze the data, and solve the following problems:7 P) \; s3 ~2 q, n& H
    1. Which wildlife groups and species are traded the most (in terms of live; t2 s- c1 ^9 u
    animals taken from the wild)?
    6 V! T, @8 x. M9 x. B2. What are the main purposes for trade of these animals?
    - I( b" W& l8 [$ o) x# a3. How has the trade changed over the past two decades (2003-2022)?
    ) T$ k" [$ y9 y* X; \: K0 c4. Whether the wildlife trade is related to the epidemic situation of major
    6 D+ Q. B! K1 P2 ~* U* Minfectious diseases?) p5 Q6 e* M. F) w3 N
    25. Do you agree with banning on wildlife trade for a long time? Whether it
    0 y5 o' p6 d; y! Iwill have a great impact on the economy and society, and why?
    * t9 [4 l1 ~8 `" ?7 a$ k6. Write a letter to the relevant departments of the US government to explain( b' D: S9 V8 ]
    your views and policy suggestions.
    # t" N7 l; N6 h) r% C. `5 Z
    3 p. [7 ~7 G1 ^  o$ X
    9 \& d- O' L4 n) G* O5 h; r
    ) i3 d- i+ C! B6 \3 k
    8 z9 A0 N# f0 f
    ' g4 e. ]0 {! v: |& j7 V* V: X
    % n! I$ u% y. Z( r2 N$ y& J
    / S( `6 S) z& |( A: ?; O

    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.rar

    2.01 MB, 下载次数: 84, 下载积分: 体力 -2 点

    zan
    转播转播0 分享淘帖0 分享分享0 收藏收藏1 支持支持1 反对反对0 微信微信
    717660037        

    0

    主题

    2

    听众

    63

    积分

    升级  61.05%

    该用户从未签到

    国际赛参赛者

    回复

    使用道具 举报

    0

    主题

    3

    听众

    9

    积分

    升级  4.21%

    该用户从未签到

    回复

    使用道具 举报

    2

    主题

    3

    听众

    44

    积分

    升级  41.05%

  • TA的每日心情
    开心
    2023-9-5 21:53
  • 签到天数: 5 天

    [LV.2]偶尔看看I

    自我介绍
    我是来自玉溪师范学院的大三学生
    回复

    使用道具 举报

    0

    主题

    1

    听众

    4

    积分

    升级  80%

    该用户从未签到

    回复

    使用道具 举报

    para999        

    0

    主题

    1

    听众

    9

    积分

    升级  4.21%

  • TA的每日心情
    开心
    2024-2-2 23:17
  • 签到天数: 1 天

    [LV.1]初来乍到

    自我介绍
    1
    回复

    使用道具 举报

    para999        

    0

    主题

    1

    听众

    9

    积分

    升级  4.21%

  • TA的每日心情
    开心
    2024-2-2 23:17
  • 签到天数: 1 天

    [LV.1]初来乍到

    自我介绍
    1
    回复

    使用道具 举报

    您需要登录后才可以回帖 登录 | 注册地址

    qq
    收缩
    • 电话咨询

    • 04714969085
    fastpost

    关于我们| 联系我们| 诚征英才| 对外合作| 产品服务| QQ

    手机版|Archiver| |繁體中文 手机客户端  

    蒙公网安备 15010502000194号

    Powered by Discuz! X2.5   © 2001-2013 数学建模网-数学中国 ( 蒙ICP备14002410号-3 蒙BBS备-0002号 )     论坛法律顾问:王兆丰

    GMT+8, 2026-1-15 05:19 , Processed in 2.027093 second(s), 88 queries .

    回顶部